人工智能
卷积神经网络
计算机科学
模式识别(心理学)
特征(语言学)
特征提取
人工神经网络
上下文图像分类
模糊逻辑
模糊集
图像(数学)
语言学
哲学
作者
Chia‐Feng Juang,Yun-Wei Cheng,Yeh-Ming Lin
标识
DOI:10.1109/tfuzz.2023.3318086
摘要
This article proposes a deep feature map-based fuzzy neural classification network (DFM-FNCN) with applications to shape-based classification problems. The DFM-FNCN is characterized by compact and visually interpretable fuzzy if-then rules. Classification features in the DFM-FNCN are obtained from feature maps in a deep convolutional neural network. The DFM-FNCN employs the divide-and-conquer technique, where a feature map-based fuzzification operation is proposed to find the firing strength of a fuzzy rule, to address the curse of dimensionality problem. The structure and parameters of the DFM-FNCN are learned through online rule generation and gradient descent algorithms, respectively. For visual interpretation of the learned fuzzy rules, this article designs a deep decoder to map the antecedent of a fuzzy rule to an object-shaped image. The inference behavior of a fuzzy rule is interpreted by inspecting the relationship between the visualized antecedent and the classification levels of each class in the consequent. To speed up retraining of the DFM-FNCN in a new scenario, this article proposes a method to select representative retraining images in a low-dimensional fuzzy rule-mapped space. The DFM-FNCN is applied to classify human postures and moving objects. Experimental results show the advantages of high classification accuracy, model interpretability, and retraining abilities of the DFM-FNCN.
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