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Improved Kidney Stone Recognition Through Attention and Multi-View Feature Fusion Strategies

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arxiv 2211.02967 v1 pith:YEDREGEX submitted 2022-11-05 cs.CV cs.AI

Improved Kidney Stone Recognition Through Attention and Multi-View Feature Fusion Strategies

classification cs.CV cs.AI
keywords kidneyattentionfusionimprovedstonedeepextractionfeatures
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This contribution presents a deep learning method for the extraction and fusion of information relating to kidney stone fragments acquired from different viewpoints of the endoscope. Surface and section fragment images are jointly used during the training of the classifier to improve the discrimination power of the features by adding attention layers at the end of each convolutional block. This approach is specifically designed to mimic the morpho-constitutional analysis performed in ex-vivo by biologists to visually identify kidney stones by inspecting both views. The addition of attention mechanisms to the backbone improved the results of single view extraction backbones by 4% on average. Moreover, in comparison to the state-of-the-art, the fusion of the deep features improved the overall results up to 11% in terms of kidney stone classification accuracy.

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