SWIPENET: Object detection in noisy underwater scenes
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摘要
Deep learning based object detection methods have achieved promising performance in controlled environments. However, these methods lack sufficient capabilities to handle underwater object detection due to these challenges: (1) images in the underwater datasets and real applications are blurry whilst accompanying severe noise that confuses the detectors and (2) objects in real applications are usually small. In this paper, we propose a Sample-WeIghted hyPEr Network (SWIPENET), and a novel training paradigm named Curriculum Multi-Class Adaboost (CMA), to address these two problems at the same time. Firstly, the backbone of SWIPENET produces multiple high resolution and semantic-rich Hyper Feature Maps, which significantly improve small object detection. Secondly, inspired by the human education process that drives the learning from easy to hard concepts, we propose the noise-robust CMA training paradigm that learns the clean data first and then move on to learns the diverse noisy data. Experiments on four underwater object detection datasets show that the proposed SWIPENET+CMA framework achieves better or competitive accuracy in object detection against several state-of-the-art approaches.
论文关键词:Underwater object detection,Curriculum Multi-Class Adaboost,Sample-weighted detection loss,Noisy data
论文评审过程:Received 13 November 2021, Revised 10 July 2022, Accepted 21 July 2022, Available online 23 July 2022, Version of Record 30 July 2022.
论文官网地址:https://doi.org/10.1016/j.patcog.2022.108926