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A Comprehensive Study on Intelligence System for Automatize Event
Tracker System Using Learning Method
Dr. Balakrishnan Natarajan1*
• Dr.A. Vanitha2
1*
Associate Professor, Department of Master of Computer Applications, Sona College of Technology, Salem, Tamil Nadu, India.
E-mail: nbkkar29@gmail.com
2
Assistant Professor, Department of Master of Computer Applications, Sona College of Technology, Salem, Tamil Nadu, India.
E-mail: vanitarget@gmail.com
A R T I C L E I N F O
Article History:
Received: 25.04.2021
Accepted: 02.06.2021
Available Online: 12.07.2021
Keywords:
Code Book
Data Cleaning
Image Extraction
Learning Vector
Non-printed Textures
Prediction Algorithm
Printed Textures
A B S T R A C T
In image processing, the radical scheme is required to propose a model for extracting the
required content from an image. It plays a critical position to offer significant facts and
needs methods in various automation arenas. By keeping the way of a parting textual
content from images has proposed via following the sparse matrix illustration, grouping text
components are based on heuristic rules and clustered into sentence generation. This paper
directs a study on image analysis that inspects visual items as objects and different text
patterns. Logistic Regression, Linear Discriminant Analysis naïve Bayes Algorithm are used to
predict the image forms. This proposed work promotes the learning algorithm called
Learning Vector Quantization Prediction Algorithm (LVQ Predict) is used to analysis the parts
of the image. The features are extracted and classifies into printed and non-printed texts.
Further, these texts are normalized and documented.
Please cite this paper as follows:
Dr. Natarajan, B. and Dr. Vanitha, A. (2021). A Comprehensive Study on Intelligence System for Automatize Event Tracker System Using
Learning Method. Alinteri Journal of Agriculture Sciences, 36(2): 18-21. doi: 10.47059/alinteri/V36I2/AJAS21111
Introduction
Pre-processing [6] is an essential steps to identify the
elements of an image that transforms e-image into a
collection of attributes a good way to be interpreted into
the OCR system. This technique consist the features of
grayscale methods, pixel into binary transformation,
thinning process to remove unwanted backgrounds, obtain
historical characteristics, segmentation and scalability
process. Those are extracting features and classifying into
further. In figure is stated as the following:
* Corresponding author: nbkkar29@gmail.com Figure 1. Certificate Image Features Extraction and
Classification
Alinteri J. of Agr. Sci. (2021) 36(2): 18-21
e-ISSN: 2587-2249
info@alinteridergisi.com
http://dergipark.gov.tr/alinterizbd
http://www.alinteridergisi.com/
DOI:10.47059/alinteri/V36I2/AJAS21111
RESEARCH ARTICLE
Dr. Natarajan, B. and Dr. Vanitha, A. (2021). Alınteri Journal of Agriculture Sciences 36(2): 18-21
19
A few researches [7- 8] that have been accomplished in
binarization and segmenting might be reviewed as a
recommendation of the technique used in the system. The
threshold has set with respect to hue, bitmaps, and
segmentation range.
OCR is the stage with the study of supervised learning
algorithm on machine learning that facilitate to understand
the picture relies on characteristics, devise into classes with
highest accuracy from the image set [9-10]. In this model,
figure 2 has described that has taken the samples of various
images as input. It has six components that follow gray
scaling, binarization, segmenting, background removing,
thinning and scaling which supports the feature extraction,
classifying into set of objects. The streamlined object can
be normalized from the dictionaries whereas has historical
information that predicts word can be extracted and
provides meaningful information.
Figure 2. Image Classification Process
DAR is a technique introduced in fully convolutional
networks that focusing text and object localization to
recognize the text by proposed language modelling
facilitated for handwritten images. In additional with this,
signature are verified, document are categorized and
retrieved [11].
Related Work
Jing Wang [1] applied a sentence decoder that gives a
technique to predict words through a multi-modularity
attention model that determine the features of the images.
The comparison made between convention and OCR-based
approaches. There are three prominent components of the
propped model, MMA-SR is implemented into feature
extraction, multimodal attention and word prediction. This
model has looked at conventional image captioning, OCR
based images are transformed into a spatial relationship of
the image that correlates the similarities, textures and
patterns. Each entity is accessed into various objects and
continues a historic repository associated with LSTM. This
muti-modularity simplifies and categorize the features are
defined. The final stage is a prediction of words by means of
enhancing the probabilities of words are mapped with
spatial relationship sets.
Yuming He [2] focused generalized image knowledge
with the use of Deep-Learning based algorithm are
efficiently worked with images on classification, detection
and segmentation. Its miles automatic to look into, analyze
the function are hidden in photographs with the aid of
repetitive stimulating guidelines some of the records-set.
Seelavathy, et al [3], It's far an elaborate mission due to
innovative movements of cellular digital camera beside by
manner of hand on shaking, transforming illumination at
hand over shade movement, and so forth. It is filtered out
from more icons are configured in this model which is
improvised the quality of transcription, increase the time of
responsiveness and more memory consumption has saved are
observed.
Nathiya N & Pradeepa K [4] has proposed a quick and
useful cropping algorithm is designed to extract multi
orientated textual content from an image. The enter picture
is first filtered with the related element method. Related
thing clustering is then used to identify candidate text areas
based totally on the most distinction. The frame of every
linked thing allows splitting the exceptional textual content
strings from every other. Then normalize candidate word
regions and decide whether every vicinity includes textual
content or now not. The size, skew, and shade of each
candidate may be envisioned from CCs, to expand a
text/non-textual content classifier for normalized snapshots.
on this strategies no longer only discover textual content, it
also extracts from the image and acknowledges the text in
phrases of storing the diagnosed phrases into a separate file
with the aid of incorporating numerous key upgrades over
traditional existing strategies to advise a unique CC
clustering-based totally scene textual content detection
approach, which subsequently ends in widespread overall
performance improvement over the other competitive
methods.
A unique textual content extraction approach [5] was
presented from GIF images. Graphical and document related
images containing text and graphics additives are taken into
consideration as 2D in which defines morphological traits.
The algorithm relies upon a sparse illustration framework
with as it should be selected discriminative over complete
dictionaries, each one offers sparse illustration over one sort
of signal and non-sparse representation over the opposite.
Separation of text and photographs additives is obtained
through selling sparse illustration of input pix in those two
dictionaries. Some heuristic guidelines are used for grouping
text additives into textual content strings in submit-
processing steps. The proposed approach overcomes the
Dr. Natarajan, B. and Dr. Vanitha, A. (2021). Alınteri Journal of Agriculture Sciences 36(2): 18-21
20
hassle of touching among textual content and portraits.
Preliminary experiments display some promising effects on
special types of file.
Intelligence System for Automatize Event
Tracker System Using Learning Method
Enhancing the images is the challenging task is the real
scenario. The main objective is to improve the visibility of
the images and further, extract the various features of the
images for predicting the required segment of the images.
There many techniques available to enhance the images
either by equalizing the pixel using the histogram, improving
the contrast, or applying the transformation to the features
of the images. Artificial Intelligence works in integrating the
human with the machine in human cognition, acquiring and
calculating the events of processing. Many artificial
intelligence techniques are processing the symbolic
reasoning in building the recognition and learning actions.
The machine learning solves the complex problems in a
faster way of computing to yield best outcomes. Machine
Learning algorithms can able to recognize the speech to
text, sensing based outcome, effort estimations and lots
more. Some of the machine learning algorithms that are
used for predicting are linear regression, Logistic Regression,
Linear Discriminant Analysis Naïve Bayes and more. The
proposed system uses Learning Vector Quantization
algorithms (LVQ). LVQ is a supervised learning technique is
used to predict the image parts. The proposed Learning
Vector Prediction (LVPredict) algorithm initially, extracts
the features and classifies the images as program title,
program participants’ name, program dates and organizer’s
details. Further, these details are normalized to reduce the
duplications in data store.
The input image is divided into distinct regions and for
each region reconstruction is defined. These regions are
classified and reproduced as a vector. The collection of
possible vectors are termed as code book of the quantifiers.
Figure 3. LVPredict Architecture Diagram
The texts in these regions are extracted as printed and
non-printed textures. These textures are analysed and
duplicates are removed. Then, it is stored into the
documents as categorized.
The predictions on the images are made by defining the
new instance (X) upon searching the codebook vectors for
the K most instances. This first part of algorithm segregates
the image features. After classification are completed, the
data mugging function is performed. To predict the
duplication Euclidean distance is calculated. The similar
images with new input are compared by this distance
measure. The Euclidean distance can be calculated by
E(X,xi) = sqrt(sum(Xj – xij)^2)) (1)
From the equation (1), Euclidean distance E can be
calculated by finding the square root of the summation of
the difference between the new point (Xj) and the existing
point xi.
The matched on the image part are removed and
remaining part are extracted to store as documents.
Results and Discussion
The Learning Vector Quantization Prediction method
(LVPredict) predicts by reading the codebook book data
randomly as input vectors. The vector instances are
processed one at a time. The Learning algorithm with LV
Predict extracts the image features and avoids the
duplication in an efficient manner. The image parts are
constructed as vectors in such a way to undergo
normalization process. After normalization process, the data
as the documents are stored in the data store efficiently.
Figure 4. Image Extraction Process
Dr. Natarajan, B. and Dr. Vanitha, A. (2021). Alınteri Journal of Agriculture Sciences 36(2): 18-21
21
The Figure 4 is the explains the process of extracting
the images using the Learnng Algorithms. Here the text
content is sepeated as printed and non-printed textures.
Thes eclasifications are further analyzed, normalized and
stored as a document.
Conclusion
The Learning Vector Qubatization Prediction
(LVQPredict) is proposed to predict the images into textures.
These textures are clasified into printed and non-printed
text. Then the dupilcations are removed by finding the
Euclidean Distance Measure. Finally, the text are stores as
document for future accessing.
References
J. Wang, J. Tang and J. Luo, "Multimodal Attention with
Image Text Saptial Relationship for OCR-Based Image
Captioning," In ACM International Conference on
Multimedia, 2020.
Y. He, "Research on Text Detection and Recognition Based
on OCR Recognition Technology," In IEEE
international conference on Information Systems and
Computer Aided Education, 2020.
Sheelavathy K V and Priya Navneet, "Extracting Text from
the Picture by using OCR Technology," Intetrnational
Journal of Advanced Research in Computer Science,
vol. 11, no. Special, pp. 53-55, May 2020.
Nathiya N and Pradeepa K, "Optical Character Recognition
for scene text detection, mining and recognition," In
IEEE international Conference on Computational
Inteligence and Computing Research, 2014.
T. V. Hoang and S. Tabbone, "Text extraction from graphical
document images using saprse representation," In
IAPR Interanational Workshop on Document Analysis
System, June 2020.
N I Widiastuti and K E Dewi, "Document Image Extraction
System Design," IOP Conf. Series: Materials Science
and Engineering, Vol. 879, no. 1, 2020.
A. Fernández-Caballero, M. T. López and J. C. Castillo,
"Display text segmentation after learning best-fitted
OCR binarization parameters," Expert Systems with
Applications, vol. 39, no. 4, pp. 4032-4043, 2012.
A. Cheung, M. Bennamoun and N. W. Bergmann, "An Arabic
optical character recognition system using
recognition-based segmentation," Pattern
recognition, vol. 34, no. 2, pp. 215-233, 2001.
M. R. Phangtriastu, J. Harefa and D. F. Tanoto, "Comparison
between neural network and support vector machine
in optical character recognition," Procedia Computer
Science, vol. 116, pp. 351-357, 2017.
S. Naz, K. Hayat, M. I. Razzak, M. W. Anwar, S. A. Madani
and S. U. Khan, "The optical character recognition of
Urdu-like cursive scripts," Pattern Recognition, vol.
47, no. 3, pp. 1229-1248, 2014.
Cheng-Lin Liu, F. Gernot A, G. Venu and J. Lianwen, "Special
issue on deep learning for document analysis and
recognition," International Journal on Document
Analysis and Recognition (IJDAR), vol. 21, August
2018.

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  • 1. 18 A Comprehensive Study on Intelligence System for Automatize Event Tracker System Using Learning Method Dr. Balakrishnan Natarajan1* • Dr.A. Vanitha2 1* Associate Professor, Department of Master of Computer Applications, Sona College of Technology, Salem, Tamil Nadu, India. E-mail: nbkkar29@gmail.com 2 Assistant Professor, Department of Master of Computer Applications, Sona College of Technology, Salem, Tamil Nadu, India. E-mail: vanitarget@gmail.com A R T I C L E I N F O Article History: Received: 25.04.2021 Accepted: 02.06.2021 Available Online: 12.07.2021 Keywords: Code Book Data Cleaning Image Extraction Learning Vector Non-printed Textures Prediction Algorithm Printed Textures A B S T R A C T In image processing, the radical scheme is required to propose a model for extracting the required content from an image. It plays a critical position to offer significant facts and needs methods in various automation arenas. By keeping the way of a parting textual content from images has proposed via following the sparse matrix illustration, grouping text components are based on heuristic rules and clustered into sentence generation. This paper directs a study on image analysis that inspects visual items as objects and different text patterns. Logistic Regression, Linear Discriminant Analysis naïve Bayes Algorithm are used to predict the image forms. This proposed work promotes the learning algorithm called Learning Vector Quantization Prediction Algorithm (LVQ Predict) is used to analysis the parts of the image. The features are extracted and classifies into printed and non-printed texts. Further, these texts are normalized and documented. Please cite this paper as follows: Dr. Natarajan, B. and Dr. Vanitha, A. (2021). A Comprehensive Study on Intelligence System for Automatize Event Tracker System Using Learning Method. Alinteri Journal of Agriculture Sciences, 36(2): 18-21. doi: 10.47059/alinteri/V36I2/AJAS21111 Introduction Pre-processing [6] is an essential steps to identify the elements of an image that transforms e-image into a collection of attributes a good way to be interpreted into the OCR system. This technique consist the features of grayscale methods, pixel into binary transformation, thinning process to remove unwanted backgrounds, obtain historical characteristics, segmentation and scalability process. Those are extracting features and classifying into further. In figure is stated as the following: * Corresponding author: nbkkar29@gmail.com Figure 1. Certificate Image Features Extraction and Classification Alinteri J. of Agr. Sci. (2021) 36(2): 18-21 e-ISSN: 2587-2249 info@alinteridergisi.com http://dergipark.gov.tr/alinterizbd http://www.alinteridergisi.com/ DOI:10.47059/alinteri/V36I2/AJAS21111 RESEARCH ARTICLE
  • 2. Dr. Natarajan, B. and Dr. Vanitha, A. (2021). Alınteri Journal of Agriculture Sciences 36(2): 18-21 19 A few researches [7- 8] that have been accomplished in binarization and segmenting might be reviewed as a recommendation of the technique used in the system. The threshold has set with respect to hue, bitmaps, and segmentation range. OCR is the stage with the study of supervised learning algorithm on machine learning that facilitate to understand the picture relies on characteristics, devise into classes with highest accuracy from the image set [9-10]. In this model, figure 2 has described that has taken the samples of various images as input. It has six components that follow gray scaling, binarization, segmenting, background removing, thinning and scaling which supports the feature extraction, classifying into set of objects. The streamlined object can be normalized from the dictionaries whereas has historical information that predicts word can be extracted and provides meaningful information. Figure 2. Image Classification Process DAR is a technique introduced in fully convolutional networks that focusing text and object localization to recognize the text by proposed language modelling facilitated for handwritten images. In additional with this, signature are verified, document are categorized and retrieved [11]. Related Work Jing Wang [1] applied a sentence decoder that gives a technique to predict words through a multi-modularity attention model that determine the features of the images. The comparison made between convention and OCR-based approaches. There are three prominent components of the propped model, MMA-SR is implemented into feature extraction, multimodal attention and word prediction. This model has looked at conventional image captioning, OCR based images are transformed into a spatial relationship of the image that correlates the similarities, textures and patterns. Each entity is accessed into various objects and continues a historic repository associated with LSTM. This muti-modularity simplifies and categorize the features are defined. The final stage is a prediction of words by means of enhancing the probabilities of words are mapped with spatial relationship sets. Yuming He [2] focused generalized image knowledge with the use of Deep-Learning based algorithm are efficiently worked with images on classification, detection and segmentation. Its miles automatic to look into, analyze the function are hidden in photographs with the aid of repetitive stimulating guidelines some of the records-set. Seelavathy, et al [3], It's far an elaborate mission due to innovative movements of cellular digital camera beside by manner of hand on shaking, transforming illumination at hand over shade movement, and so forth. It is filtered out from more icons are configured in this model which is improvised the quality of transcription, increase the time of responsiveness and more memory consumption has saved are observed. Nathiya N & Pradeepa K [4] has proposed a quick and useful cropping algorithm is designed to extract multi orientated textual content from an image. The enter picture is first filtered with the related element method. Related thing clustering is then used to identify candidate text areas based totally on the most distinction. The frame of every linked thing allows splitting the exceptional textual content strings from every other. Then normalize candidate word regions and decide whether every vicinity includes textual content or now not. The size, skew, and shade of each candidate may be envisioned from CCs, to expand a text/non-textual content classifier for normalized snapshots. on this strategies no longer only discover textual content, it also extracts from the image and acknowledges the text in phrases of storing the diagnosed phrases into a separate file with the aid of incorporating numerous key upgrades over traditional existing strategies to advise a unique CC clustering-based totally scene textual content detection approach, which subsequently ends in widespread overall performance improvement over the other competitive methods. A unique textual content extraction approach [5] was presented from GIF images. Graphical and document related images containing text and graphics additives are taken into consideration as 2D in which defines morphological traits. The algorithm relies upon a sparse illustration framework with as it should be selected discriminative over complete dictionaries, each one offers sparse illustration over one sort of signal and non-sparse representation over the opposite. Separation of text and photographs additives is obtained through selling sparse illustration of input pix in those two dictionaries. Some heuristic guidelines are used for grouping text additives into textual content strings in submit- processing steps. The proposed approach overcomes the
  • 3. Dr. Natarajan, B. and Dr. Vanitha, A. (2021). Alınteri Journal of Agriculture Sciences 36(2): 18-21 20 hassle of touching among textual content and portraits. Preliminary experiments display some promising effects on special types of file. Intelligence System for Automatize Event Tracker System Using Learning Method Enhancing the images is the challenging task is the real scenario. The main objective is to improve the visibility of the images and further, extract the various features of the images for predicting the required segment of the images. There many techniques available to enhance the images either by equalizing the pixel using the histogram, improving the contrast, or applying the transformation to the features of the images. Artificial Intelligence works in integrating the human with the machine in human cognition, acquiring and calculating the events of processing. Many artificial intelligence techniques are processing the symbolic reasoning in building the recognition and learning actions. The machine learning solves the complex problems in a faster way of computing to yield best outcomes. Machine Learning algorithms can able to recognize the speech to text, sensing based outcome, effort estimations and lots more. Some of the machine learning algorithms that are used for predicting are linear regression, Logistic Regression, Linear Discriminant Analysis Naïve Bayes and more. The proposed system uses Learning Vector Quantization algorithms (LVQ). LVQ is a supervised learning technique is used to predict the image parts. The proposed Learning Vector Prediction (LVPredict) algorithm initially, extracts the features and classifies the images as program title, program participants’ name, program dates and organizer’s details. Further, these details are normalized to reduce the duplications in data store. The input image is divided into distinct regions and for each region reconstruction is defined. These regions are classified and reproduced as a vector. The collection of possible vectors are termed as code book of the quantifiers. Figure 3. LVPredict Architecture Diagram The texts in these regions are extracted as printed and non-printed textures. These textures are analysed and duplicates are removed. Then, it is stored into the documents as categorized. The predictions on the images are made by defining the new instance (X) upon searching the codebook vectors for the K most instances. This first part of algorithm segregates the image features. After classification are completed, the data mugging function is performed. To predict the duplication Euclidean distance is calculated. The similar images with new input are compared by this distance measure. The Euclidean distance can be calculated by E(X,xi) = sqrt(sum(Xj – xij)^2)) (1) From the equation (1), Euclidean distance E can be calculated by finding the square root of the summation of the difference between the new point (Xj) and the existing point xi. The matched on the image part are removed and remaining part are extracted to store as documents. Results and Discussion The Learning Vector Quantization Prediction method (LVPredict) predicts by reading the codebook book data randomly as input vectors. The vector instances are processed one at a time. The Learning algorithm with LV Predict extracts the image features and avoids the duplication in an efficient manner. The image parts are constructed as vectors in such a way to undergo normalization process. After normalization process, the data as the documents are stored in the data store efficiently. Figure 4. Image Extraction Process
  • 4. Dr. Natarajan, B. and Dr. Vanitha, A. (2021). Alınteri Journal of Agriculture Sciences 36(2): 18-21 21 The Figure 4 is the explains the process of extracting the images using the Learnng Algorithms. Here the text content is sepeated as printed and non-printed textures. Thes eclasifications are further analyzed, normalized and stored as a document. Conclusion The Learning Vector Qubatization Prediction (LVQPredict) is proposed to predict the images into textures. These textures are clasified into printed and non-printed text. Then the dupilcations are removed by finding the Euclidean Distance Measure. Finally, the text are stores as document for future accessing. References J. Wang, J. Tang and J. Luo, "Multimodal Attention with Image Text Saptial Relationship for OCR-Based Image Captioning," In ACM International Conference on Multimedia, 2020. Y. He, "Research on Text Detection and Recognition Based on OCR Recognition Technology," In IEEE international conference on Information Systems and Computer Aided Education, 2020. Sheelavathy K V and Priya Navneet, "Extracting Text from the Picture by using OCR Technology," Intetrnational Journal of Advanced Research in Computer Science, vol. 11, no. Special, pp. 53-55, May 2020. Nathiya N and Pradeepa K, "Optical Character Recognition for scene text detection, mining and recognition," In IEEE international Conference on Computational Inteligence and Computing Research, 2014. T. V. Hoang and S. Tabbone, "Text extraction from graphical document images using saprse representation," In IAPR Interanational Workshop on Document Analysis System, June 2020. N I Widiastuti and K E Dewi, "Document Image Extraction System Design," IOP Conf. Series: Materials Science and Engineering, Vol. 879, no. 1, 2020. A. Fernández-Caballero, M. T. López and J. C. Castillo, "Display text segmentation after learning best-fitted OCR binarization parameters," Expert Systems with Applications, vol. 39, no. 4, pp. 4032-4043, 2012. A. Cheung, M. Bennamoun and N. W. Bergmann, "An Arabic optical character recognition system using recognition-based segmentation," Pattern recognition, vol. 34, no. 2, pp. 215-233, 2001. M. R. Phangtriastu, J. Harefa and D. F. Tanoto, "Comparison between neural network and support vector machine in optical character recognition," Procedia Computer Science, vol. 116, pp. 351-357, 2017. S. Naz, K. Hayat, M. I. Razzak, M. W. Anwar, S. A. Madani and S. U. Khan, "The optical character recognition of Urdu-like cursive scripts," Pattern Recognition, vol. 47, no. 3, pp. 1229-1248, 2014. Cheng-Lin Liu, F. Gernot A, G. Venu and J. Lianwen, "Special issue on deep learning for document analysis and recognition," International Journal on Document Analysis and Recognition (IJDAR), vol. 21, August 2018.