TransUNet with unified focal loss for class-imbalanced semantic segmentation

IF 0.8 Q4 ROBOTICS
Kento Wakamatsu, Satoshi Ono
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引用次数: 0

Abstract

Class imbalanceness, i.e., the inequality of the number of samples between categories, adversely affects machine learning models, including deep neural networks. In semantic segmentation, extracting a small area of minor categories with respect to the entire image includes the same problem as class imbalanceness. Such difficulties exist in various applications of semantic segmentation, including medical images. This paper proposes a semantic segmentation method that considers global features and appropriately detects small categories. The proposed method adopts TransUNet architecture and Unified Focal Loss (UFL) function; the former allows considering global image features, and the latter mitigates the harmful effects of class imbalanceness. Experimental results with real-world applications showed that the proposed method successfully extracts small regions of minor classes without increasing false positives of other classes.

具有统一焦点损失的 TransUNet,用于类别不平衡语义分割
类别不平衡(即类别间样本数量不平等)会对机器学习模型(包括深度神经网络)产生不利影响。在语义分割中,提取相对于整个图像的小范围次要类别也存在与类别不平衡相同的问题。这种困难存在于语义分割的各种应用中,包括医学图像。本文提出了一种考虑全局特征并适当检测小类别的语义分割方法。该方法采用 TransUNet 架构和统一焦点损失(UFL)函数,前者允许考虑全局图像特征,后者减轻了类别不平衡的有害影响。实际应用的实验结果表明,所提出的方法成功地提取了小类别的小区域,而不会增加其他类别的误报率。
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来源期刊
CiteScore
2.00
自引率
22.20%
发文量
101
期刊介绍: Artificial Life and Robotics is an international journal publishing original technical papers and authoritative state-of-the-art reviews on the development of new technologies concerning artificial life and robotics, especially computer-based simulation and hardware for the twenty-first century. This journal covers a broad multidisciplinary field, including areas such as artificial brain research, artificial intelligence, artificial life, artificial living, artificial mind research, brain science, chaos, cognitive science, complexity, computer graphics, evolutionary computations, fuzzy control, genetic algorithms, innovative computations, intelligent control and modelling, micromachines, micro-robot world cup soccer tournament, mobile vehicles, neural networks, neurocomputers, neurocomputing technologies and applications, robotics, robus virtual engineering, and virtual reality. Hardware-oriented submissions are particularly welcome. Publishing body: International Symposium on Artificial Life and RoboticsEditor-in-Chiei: Hiroshi Tanaka Hatanaka R Apartment 101, Hatanaka 8-7A, Ooaza-Hatanaka, Oita city, Oita, Japan 870-0856 ©International Symposium on Artificial Life and Robotics
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