Machine Vision Inspection Systems, Machine Learning-Based Approaches (eBook)
John Wiley & Sons (Verlag)
978-1-119-78610-8 (ISBN)
Machine Vision Inspection Systems (MVIS) is a multidisciplinary research field that emphasizes image processing, machine vision and, pattern recognition for industrial applications. Inspection techniques are generally used in destructive and non-destructive evaluation industry. Now a day's the current research on machine inspection gained more popularity among various researchers, because the manual assessment of the inspection may fail and turn into false assessment due to a large number of examining while inspection process.
This volume 2 covers machine learning-based approaches in MVIS applications and it can be employed to a wide diversity of problems particularly in Non-Destructive testing (NDT), presence/absence detection, defect/fault detection (weld, textile, tiles, wood, etc.), automated vision test & measurement, pattern matching, optical character recognition & verification (OCR/OCV), natural language processing, medical diagnosis, etc. This edited book is designed to address various aspects of recent methodologies, concepts, and research plan out to the readers for giving more depth insights for perusing research on machine vision using machine learning-based approaches.
Muthukumaran Malarvel obtained his PhD in digital image processing and he is currently working as an associate professor in the Department of Computer Science and Engineering at Chitkara University, Punjab, India. His research interests include digital image processing, machine vision systems, image statistical analysis & feature extraction, and machine learning algorithms.
Soumya Ranjan Nayak obtained his PhD in computer science and engineering from the Biju Patnaik University of Technology, India. He has more than a decade of teaching and research experience and currently is working as an assistant professor, Amity University, Noida, India. His research interests include image analysis on fractal geometry, color and texture analysis jointly and separately.
Prasant Kumar Pattnaik PhD (Computer Science), Fellow IETE, Senior Member IEEE is a Professor at the School of Computer Engineering, KIIT Deemed to be University, Bhubaneswar, India. He has more than a decade of teaching and research experience. His areas of interest include mobile computing, cloud computing, cyber security, intelligent systems and brain computer interface.
Surya Narayan Panda is a Professor and Director Research at Chitkara University, Punjab, India. His areas of interest include cybersecurity, networking, advanced computer networks, machine learning, and artificial intelligence. He has developed the prototype of Smart Portable Intensive Care Unit through which the doctor can provide immediate virtual medical assistance to emergency cases in the ambulance. He is currently involved in designing different healthcare devices for real-time issues using AI and ML.
Machine Vision Inspection Systems (MVIS) is a multidisciplinary research field that emphasizes image processing, machine vision and, pattern recognition for industrial applications. Inspection techniques are generally used in destructive and non-destructive evaluation industry. Now a day's the current research on machine inspection gained more popularity among various researchers, because the manual assessment of the inspection may fail and turn into false assessment due to a large number of examining while inspection process. This volume 2 covers machine learning-based approaches in MVIS applications and it can be employed to a wide diversity of problems particularly in Non-Destructive testing (NDT), presence/absence detection, defect/fault detection (weld, textile, tiles, wood, etc.), automated vision test & measurement, pattern matching, optical character recognition & verification (OCR/OCV), natural language processing, medical diagnosis, etc. This edited book is designed to address various aspects of recent methodologies, concepts, and research plan out to the readers for giving more depth insights for perusing research on machine vision using machine learning-based approaches.
Muthukumaran Malarvel obtained his PhD in digital image processing and he is currently working as an associate professor in the Department of Computer Science and Engineering at Chitkara University, Punjab, India. His research interests include digital image processing, machine vision systems, image statistical analysis & feature extraction, and machine learning algorithms. Soumya Ranjan Nayak obtained his PhD in computer science and engineering from the Biju Patnaik University of Technology, India. He has more than a decade of teaching and research experience and currently is working as an assistant professor, Amity University, Noida, India. His research interests include image analysis on fractal geometry, color and texture analysis jointly and separately. Prasant Kumar Pattnaik PhD (Computer Science), Fellow IETE, Senior Member IEEE is a Professor at the School of Computer Engineering, KIIT Deemed to be University, Bhubaneswar, India. He has more than a decade of teaching and research experience. His areas of interest include mobile computing, cloud computing, cyber security, intelligent systems and brain computer interface. Surya Narayan Panda is a Professor and Director Research at Chitkara University, Punjab, India. His areas of interest include cybersecurity, networking, advanced computer networks, machine learning, and artificial intelligence. He has developed the prototype of Smart Portable Intensive Care Unit through which the doctor can provide immediate virtual medical assistance to emergency cases in the ambulance. He is currently involved in designing different healthcare devices for real-time issues using AI and ML.
1
Machine Learning-Based Virus Type Classification Using Transmission Electron Microscopy Virus Images
Kalyan Kumar Jena1*, Sourav Kumar Bhoi1, Soumya Ranjan Nayak2 and Chittaranjan Mallick3
1Department of Computer Science and Engineering, Parala Maharaja Engineering College, Berhampur, India
2Amity School of Engineering and Technology, Amity University Uttar Pradesh, Noida, India
3Department of Mathematics, Parala Maharaja Engineering College, Berhampur, India
Abstract
Viruses are the submicroscopic infectious agents having the capability of replication itself inside the living cells of human body. Different dangerous infectious viruses greatly affect the human society along with plants, animals and microorganisms. It is very difficult for the survival of human society due to these viruses. In this chapter, Machine Learning (ML)-based approach is used to analyze several transmission electron microscopy virus images (TEMVIs). In this work, several TEMVIs such as Ebola virus (EV), Entero virus (ENV), Lassa virus (LV), severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), Zika virus (ZV), etc. are analyzed. The ML-based approach mainly focuses on the classification techniques such as Logistic Regression (LR), Neural Network (NN), k-Nearest Neighbors (kNN) and Naive Bayes (NB) for the processing of TEMVIs. The performance of these techniques is analyzed using classification accuracy (CA) parameter. The simulation of this work is carried out using Orange3-3.24.1.
Keywords: ML, TEMVIs, Classification Techniques, LR, NN, kNN, NB
1.1 Introduction
ML [1–34] plays an important role in the today’s era for the researchers and scientists to carry out their research work. ML is considered as one of the most important application of artificial intelligence. Systems can be learned and improved from experience in automatic manner without any explicit programming by using ML mechanism. The main focus of ML is to develop computer programs that can access data as well as use it for learning purpose. ML techniques can be mainly classified as unsupervised learning techniques and supervised learning techniques. Unsupervised learning techniques focus on clustering techniques and supervised learning techniques focus on classification techniques. Hierarchical clustering, distance map, distance matrix, DBSCAN, manifold learning, k-means, Louvain clustering, etc. are some ML-based clustering techniques. ML [1–34] focuses on several classification techniques such as LR, NN, kNN, NB, decision tree, random forest, AdaBoost, etc. The similar objects can be grouped into a set which is known as cluster by using clustering techniques. Classification techniques are used to categorize a set of data into classes. In classification technique, the algorithm can learn from the data input provided to it and then use this learning mechanism to classify new observations. These techniques are mainly used to categorize the data into a desired and distinct number of classes where label can be assigned to each class. It is a very challenging task to categorize the set of data into classes accurately. Several ML-based classification techniques can be used for such classification. Viruses [57, 58] are the submicroscopic infectious agents and they are having the replication capability due to which they replicate itself inside the living cells of human body. Viruses can be classified as DNA and RNA viruses on the basis of nucleic acid, cubical, spiral, and radial symmetry, complex viruses on the basis of structure, bacteriophage, plant and animal, insect viruses on the basis of host range. Several viruses can be transmitted through respiratory route, feco-oral route, sexual contacts, blood transfusion, etc. Very dangerous viruses such as SARS-CoV-2, EV, ENV, LV, ZV, dengue virus, Hepatitis C virus have adverse effects which greatly affect the human society in the current scenario. In this work, several ML-based classification techniques such as LR, NN, kNN, NB are focused for the implementation of classification mechanism on several TEMVIs such as EV, ENV, LV, SARS-CoV-2 and ZV.
The main contribution of this work is stated as follows.
- ML-based approach is used for the processing of several TEMVIs such as EV, ENV, LV, SARS-CoV-2 and ZV.
- ML-based approach focuses on several classification techniques such as LR, NN, kNN and NB for such processing.
- These techniques are compared using the performance metric such as CA.
- This work is carried out using Orange3-3.24.1.
The rest of the chapter is organized as follows. Section 1.2 describes related works, Section 1.3 describes methodology for the processing of TEMVIs, Section 1.4 describes results and discussion and Section 1.5 describes the conclusion.
1.2 Related Works
Different works have introduced by several researchers and scientists for the processing of virus as well as other images for wide variety of applications in the real world scenario [1–34, 35–55]. Some of the works are described as follows. Singh et al. [2] focus on the review of several ML as well as image processing techniques for the detection and classification of paddy leaf diseases. Al-Kasassbeh et al. [5] focus on the feature selection mechanism by the help of ML-based approach for the classification of malware. Yang et al. [6] focus on a sequence embedding-based ML mechanism for the prediction of human-virus protein–protein interactions. Dey et al. [7] focus on ML-based techniques for sequence based prediction of viral host interactions between human proteins and SARS-CoV-2. Karanja et al. [9] focus on ML-based techniques as well as image texture features for the analysis of internet of things malware. Muda et al. [14] focus on the k-means clustering as well as NB classification mechanism for intrusion detection. Trishan et al. [17] focus on ML-based classification such as NB, k-nearest and random forest to detect Hepatitis A, B, C and E viruses. Kaur [19] focuses on the ML-based approaches such as kNN and NB for the detection of fraud associated with credit card. Goyal [20] focuses on a NB model that is based on enhanced kNN classification mechanism for the prediction of breast cancer. Wahid et al. [22] focus on the performance analysis of several ML-based techniques for the classification of microscopic bacteria images. Ito et al. [27] focus on convolutional NN mechanism for the detection of virus particle in transmission electron microscopy (TEM) images. Devan et al. [28] focus on transfer learning mechanism to detect herpesvirus capsids by considering several TEM images.
1.3 Methodology
In this work, the ML-based classification techniques [10, 11, 14–16] such as LR, NN, kNN and NB are used to carry out classification mechanism on several TEMVIs such as EV, ENV, LV, SARS-CoV-2 and ZV. LR technique is used for the prediction of probability of a target variable or dependent variable. Generally, this target variable has a dichotomous nature. It deals with the data coded as 1 for yes or success and 0 for no or failure. A LR model can be used to predict a dependent data variable by considering the relationship between one or more existing independent variable. NN technique deals with a network of functions in order to understand as well as translate a data input of one form into another form as required output. It deals with different neurons layers where each layer can receive inputs from previous layers and can pass outputs to further layers. This technique can process complex data inputs into a space that the computers can be able to understand. kNN technique uses all the available data and classifies new data points on the basis of similarity measures. This technique takes k closest training examples in the feature space as input and generates a class membership as output. NB technique uses the Bayes theorem and this technique assumes that the presence of a particular feature in a class is not related to any other features. So, every features pair is independent of each other. This technique can predict the membership probabilities for each class and the class having the highest probability can be considered as the most likely class.
In this work, at first the TEMVIs are given as input to the Orange 3-3.24.1 [56]. Afterwards, image embedding mechanism is carried out by taking input TEMVIs as inputs to generate embeddings or skipped TEMVIs as outputs. Several embedders such as Inception v3, SqueezeNet (local), VGG-16, VGG-19, Painters, DeepLoc, Openface can be used for image embedding purpose. SqueezeNet (local) is taken as embedder for image embedding purpose. Then, test and score calculation will be carried out by considering image embedding mechanism and by applying LR, NN, kNN and NB techniques separately to compute CA values. For LR, the regularization type, strength are considered as Ridge (L2) and C = 1 respectively. For NN, the neurons in hidden layers, activation function, solver method, regularization and maximal number of iterations are considered as 100, ReLu, Adam, a = 0.0001 and 100 respectively along with replicable training mechanism. For kNN, the number of neighbors, metric and weight are considered as 5, Euclidean and uniform respectively. For test and score calculation, inputs can be considered as data, test data, learner, preprocessor and outputs can be generated as evaluation results as well as predictions. Afterwards, confusion matrix can be generated to...
| Erscheint lt. Verlag | 14.1.2021 |
|---|---|
| Sprache | englisch |
| Themenwelt | Informatik ► Theorie / Studium ► Künstliche Intelligenz / Robotik |
| Technik ► Elektrotechnik / Energietechnik | |
| Schlagworte | Artificial Intelligence • Computer Science • Electrical & Electronics Engineering • Elektrotechnik u. Elektronik • Engineering Technology Management • Industrial Engineering • Industrielle Verfahrenstechnik • Informatik • Künstliche Intelligenz • Robotics • Robotik • Technologiemanagement |
| ISBN-10 | 1-119-78610-X / 111978610X |
| ISBN-13 | 978-1-119-78610-8 / 9781119786108 |
| Informationen gemäß Produktsicherheitsverordnung (GPSR) | |
| Haben Sie eine Frage zum Produkt? |
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