Total contribution score and fuzzy entropy based two‐stage selection of FC, ReLU and inverseReLU features of multiple convolution neural networks for erythrocytes detection

The proposed system aims at automatic erythrocytes detection using ensemble of selected features of multiple convolution neural networks (CNNs) to overcome the shortcomings of existing works arising due to the highly overlapping characteristics of handcrafted features. The main merit of this work li...

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Main Authors: Sriparna Banerjee, Sheli Sinha Chaudhuri
Format: Article
Language:English
Published: Wiley 2019-10-01
Series:IET Computer Vision
Subjects:
Online Access:https://doi.org/10.1049/iet-cvi.2018.5545
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author Sriparna Banerjee
Sheli Sinha Chaudhuri
author_facet Sriparna Banerjee
Sheli Sinha Chaudhuri
author_sort Sriparna Banerjee
collection DOAJ
description The proposed system aims at automatic erythrocytes detection using ensemble of selected features of multiple convolution neural networks (CNNs) to overcome the shortcomings of existing works arising due to the highly overlapping characteristics of handcrafted features. The main merit of this work lies in the proposed two‐stage feature selection algorithm, which completely eliminates the chances of information loss inherent in traditional CNNs, occurring due to the suppression of negative values of features by rectified linear unit (ReLU) and also largely reduces the feature dimensionality. Moreover, it is the first algorithm proposed, which is capable of selectively suppressing the positive or negative values or none of each feature depending upon its respective significance in classification, in contrary to the previously proposed variants of ReLU. Firstly, it constructs a feature space for each CNN by performing inter‐selection among its Fully connected, ReLU and InverseReLU features and selecting features possessing minimum Fuzzy Entropy and maximum newly formulated Total Contribution Score values simultaneously. Secondly, it performs intra‐selection within each selected feature space, eliminating less significant features which simultaneously satisfy the redundancy and non‐relevancy criteria stated here. Finally, by performing detection using the feature‐ensemble, this method registers 98.6% mAP, proving its excellence over existing works.
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spelling doaj.art-ac645c07b0d74ca186e5871543866df82023-09-15T10:06:29ZengWileyIET Computer Vision1751-96321751-96402019-10-0113764065010.1049/iet-cvi.2018.5545Total contribution score and fuzzy entropy based two‐stage selection of FC, ReLU and inverseReLU features of multiple convolution neural networks for erythrocytes detectionSriparna Banerjee0Sheli Sinha Chaudhuri1Electronics and Telecommunication Engineering DepartmentJadavpur UniversityKolkataIndiaElectronics and Telecommunication Engineering DepartmentJadavpur UniversityKolkataIndiaThe proposed system aims at automatic erythrocytes detection using ensemble of selected features of multiple convolution neural networks (CNNs) to overcome the shortcomings of existing works arising due to the highly overlapping characteristics of handcrafted features. The main merit of this work lies in the proposed two‐stage feature selection algorithm, which completely eliminates the chances of information loss inherent in traditional CNNs, occurring due to the suppression of negative values of features by rectified linear unit (ReLU) and also largely reduces the feature dimensionality. Moreover, it is the first algorithm proposed, which is capable of selectively suppressing the positive or negative values or none of each feature depending upon its respective significance in classification, in contrary to the previously proposed variants of ReLU. Firstly, it constructs a feature space for each CNN by performing inter‐selection among its Fully connected, ReLU and InverseReLU features and selecting features possessing minimum Fuzzy Entropy and maximum newly formulated Total Contribution Score values simultaneously. Secondly, it performs intra‐selection within each selected feature space, eliminating less significant features which simultaneously satisfy the redundancy and non‐relevancy criteria stated here. Finally, by performing detection using the feature‐ensemble, this method registers 98.6% mAP, proving its excellence over existing works.https://doi.org/10.1049/iet-cvi.2018.5545inverseReLU featuresmultiple convolution neural networkstwo-stage feature selection algorithmnegative valuesfeature dimensionalityfully connected ReLU
spellingShingle Sriparna Banerjee
Sheli Sinha Chaudhuri
Total contribution score and fuzzy entropy based two‐stage selection of FC, ReLU and inverseReLU features of multiple convolution neural networks for erythrocytes detection
IET Computer Vision
inverseReLU features
multiple convolution neural networks
two-stage feature selection algorithm
negative values
feature dimensionality
fully connected ReLU
title Total contribution score and fuzzy entropy based two‐stage selection of FC, ReLU and inverseReLU features of multiple convolution neural networks for erythrocytes detection
title_full Total contribution score and fuzzy entropy based two‐stage selection of FC, ReLU and inverseReLU features of multiple convolution neural networks for erythrocytes detection
title_fullStr Total contribution score and fuzzy entropy based two‐stage selection of FC, ReLU and inverseReLU features of multiple convolution neural networks for erythrocytes detection
title_full_unstemmed Total contribution score and fuzzy entropy based two‐stage selection of FC, ReLU and inverseReLU features of multiple convolution neural networks for erythrocytes detection
title_short Total contribution score and fuzzy entropy based two‐stage selection of FC, ReLU and inverseReLU features of multiple convolution neural networks for erythrocytes detection
title_sort total contribution score and fuzzy entropy based two stage selection of fc relu and inverserelu features of multiple convolution neural networks for erythrocytes detection
topic inverseReLU features
multiple convolution neural networks
two-stage feature selection algorithm
negative values
feature dimensionality
fully connected ReLU
url https://doi.org/10.1049/iet-cvi.2018.5545
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