Breast Cancer Image Multi-Classification Using Random Patch Aggregation and Depth-Wise Convolution based Deep-Net Model

Adapting the profound, deep convolutional neural network models for large image classification can result in the layout of network architectures with a large number of learnable parameters and tuning of those varied parameters can considerably grow the complexity of the model. To address this proble...

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Main Authors: Vandana Kate, Pragya Shukla
Format: Article
Language:English
Published: International Association of Online Engineering (IAOE) 2021-01-01
Series:International Journal of Online and Biomedical Engineering
Subjects:
Online Access:https://online-journals.org/index.php/i-joe/article/view/18513
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spelling doaj-d3e9f473b56944adb26ad4688de8de4d2021-09-02T18:04:56ZengInternational Association of Online Engineering (IAOE)International Journal of Online and Biomedical Engineering2626-84932021-01-0117018310010.3991/ijoe.v17i01.185137169Breast Cancer Image Multi-Classification Using Random Patch Aggregation and Depth-Wise Convolution based Deep-Net ModelVandana Kate0Pragya Shukla1IET, DAVV, Indore(M.P)IET, DAVV, Indore(M.P)Adapting the profound, deep convolutional neural network models for large image classification can result in the layout of network architectures with a large number of learnable parameters and tuning of those varied parameters can considerably grow the complexity of the model. To address this problem a convolutional Deep-Net Model based on the extraction of random patches and enforcing depth-wise convolutions is proposed for training and classification of widely known benchmark Breast Cancer histopathology images. The classification result of these patches is aggregated using majority vote casting in deciding the final image classification type. It has been observed that the proposed Deep-Net model implementation results when compared with classification results of the VGG Net(16 layers) learned features, outclasses in terms of accuracy when applied to breast tumor Histopathology images. The objective of this work is to examine and comprehensively analyze the sub-class classification performance of the proposed model across all optical magnification frontiers.https://online-journals.org/index.php/i-joe/article/view/18513image-multi-classificationhistopathology-imagesbreast cancer(bc)feature-extractiondeep-neural-networks
collection DOAJ
language English
format Article
sources DOAJ
author Vandana Kate
Pragya Shukla
spellingShingle Vandana Kate
Pragya Shukla
Breast Cancer Image Multi-Classification Using Random Patch Aggregation and Depth-Wise Convolution based Deep-Net Model
International Journal of Online and Biomedical Engineering
image-multi-classification
histopathology-images
breast cancer(bc)
feature-extraction
deep-neural-networks
author_facet Vandana Kate
Pragya Shukla
author_sort Vandana Kate
title Breast Cancer Image Multi-Classification Using Random Patch Aggregation and Depth-Wise Convolution based Deep-Net Model
title_short Breast Cancer Image Multi-Classification Using Random Patch Aggregation and Depth-Wise Convolution based Deep-Net Model
title_full Breast Cancer Image Multi-Classification Using Random Patch Aggregation and Depth-Wise Convolution based Deep-Net Model
title_fullStr Breast Cancer Image Multi-Classification Using Random Patch Aggregation and Depth-Wise Convolution based Deep-Net Model
title_full_unstemmed Breast Cancer Image Multi-Classification Using Random Patch Aggregation and Depth-Wise Convolution based Deep-Net Model
title_sort breast cancer image multi-classification using random patch aggregation and depth-wise convolution based deep-net model
publisher International Association of Online Engineering (IAOE)
series International Journal of Online and Biomedical Engineering
issn 2626-8493
publishDate 2021-01-01
description Adapting the profound, deep convolutional neural network models for large image classification can result in the layout of network architectures with a large number of learnable parameters and tuning of those varied parameters can considerably grow the complexity of the model. To address this problem a convolutional Deep-Net Model based on the extraction of random patches and enforcing depth-wise convolutions is proposed for training and classification of widely known benchmark Breast Cancer histopathology images. The classification result of these patches is aggregated using majority vote casting in deciding the final image classification type. It has been observed that the proposed Deep-Net model implementation results when compared with classification results of the VGG Net(16 layers) learned features, outclasses in terms of accuracy when applied to breast tumor Histopathology images. The objective of this work is to examine and comprehensively analyze the sub-class classification performance of the proposed model across all optical magnification frontiers.
topic image-multi-classification
histopathology-images
breast cancer(bc)
feature-extraction
deep-neural-networks
url https://online-journals.org/index.php/i-joe/article/view/18513
work_keys_str_mv AT vandanakate breastcancerimagemulticlassificationusingrandompatchaggregationanddepthwiseconvolutionbaseddeepnetmodel
AT pragyashukla breastcancerimagemulticlassificationusingrandompatchaggregationanddepthwiseconvolutionbaseddeepnetmodel
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