Fuzzydcnn: Incorporating Fuzzy Integral Layers To Deep Convolutional Neural Networks For Image Segmentation

IEEE CIS INTERNATIONAL CONFERENCE ON FUZZY SYSTEMS 2021 (FUZZ-IEEE)(2021)

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摘要
Convolutional neural networks (CNNs) have achieved the state-of-the-art performance in many application areas, due to the capability of automatically extracting and aggregating spatial and channel-wise features from images. Most recent studies have concentrated on modifying convolutional kernel size to achieve multi-scale spatial information. In this paper, we introduce a novel fuzzy integral module to the CNNs for fusing the information across feature channels. The fuzzy integral is a mathematical aggregation operator and is widely used in decision level fusion. Herein, we utilize a special case of fuzzy integrals namely ordered weight averaging (OWA) to merge information at feature level. Three publicly available datasets were used to evaluate the proposed fuzzy CNN model for image segmentation. The results show that the proposed fuzzy module helps in reducing the baseline model parameters by 58.54% while producing higher segmentation accuracy (measured by Dice) than the baseline method and a similar method reported in the literature.
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关键词
deep convolutional neural networks,image segmentation,channel-wise features,convolutional kernel size,multiscale spatial information,feature channels,mathematical aggregation operator,decision level fusion,feature level,fuzzy CNN,fuzzy integral layers,FuzzyDCNN,feature extraction,ordered weight averaging,OWA
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