Dual-View Pyramid Pooling in Deep Neural Networks for Improved Medical Image Classification and Confidence Calibration
Spatial pooling (SP) and cross-channel pooling (CCP) operators have been applied to aggregate spatial features and pixel-wise features from feature maps in deep neural networks (DNNs), respectively. Their main goal is to reduce computation and memory overhead without visibly weakening the performanc...
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Zusammenfassung: | Spatial pooling (SP) and cross-channel pooling (CCP) operators have been
applied to aggregate spatial features and pixel-wise features from feature maps
in deep neural networks (DNNs), respectively. Their main goal is to reduce
computation and memory overhead without visibly weakening the performance of
DNNs. However, SP often faces the problem of losing the subtle feature
representations, while CCP has a high possibility of ignoring salient feature
representations, which may lead to both miscalibration of confidence issues and
suboptimal medical classification results. To address these problems, we
propose a novel dual-view framework, the first to systematically investigate
the relative roles of SP and CCP by analyzing the difference between spatial
features and pixel-wise features. Based on this framework, we propose a new
pooling method, termed dual-view pyramid pooling (DVPP), to aggregate
multi-scale dual-view features. DVPP aims to boost both medical image
classification and confidence calibration performance by fully leveraging the
merits of SP and CCP operators from a dual-axis perspective. Additionally, we
discuss how to fulfill DVPP with five parameter-free implementations. Extensive
experiments on six 2D/3D medical image classification tasks show that our DVPP
surpasses state-of-the-art pooling methods in terms of medical image
classification results and confidence calibration across different DNNs. |
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DOI: | 10.48550/arxiv.2408.02906 |