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Knowledge distillation with a class-aware loss for endoscopic disease detection

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arxiv 2207.09530 v1 pith:A7ZTEG6D submitted 2022-07-19 cs.CV cs.AI

Knowledge distillation with a class-aware loss for endoscopic disease detection

classification cs.CV cs.AI
keywords detectionendoscopiclearningmodelclasscrucialdetectdisease
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Prevalence of gastrointestinal (GI) cancer is growing alarmingly every year leading to a substantial increase in the mortality rate. Endoscopic detection is providing crucial diagnostic support, however, subtle lesions in upper and lower GI are quite hard to detect and cause considerable missed detection. In this work, we leverage deep learning to develop a framework to improve the localization of difficult to detect lesions and minimize the missed detection rate. We propose an end to end student-teacher learning setup where class probabilities of a trained teacher model on one class with larger dataset are used to penalize multi-class student network. Our model achieves higher performance in terms of mean average precision (mAP) on both endoscopic disease detection (EDD2020) challenge and Kvasir-SEG datasets. Additionally, we show that using such learning paradigm, our model is generalizable to unseen test set giving higher APs for clinically crucial neoplastic and polyp categories

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