论文标题
SwipeNet:嘈杂的水下图像中的对象检测
SWIPENET: Object detection in noisy underwater images
论文作者
论文摘要
近年来,基于深度学习的对象检测方法在受控环境中实现了有希望的性能。但是,由于这些挑战,这些方法缺乏足够的功能来处理水下对象检测:(1)水下数据集中的图像和实际应用中的图像是模糊的,而伴随着使探测器混淆的严重噪声,而实际应用中的对象通常很小。在本文中,我们提出了一种新型的样本加权超网络(SWIPENET),以及一个名为“课程多级Adaboost(CMA)”的强大训练范式,以同时解决这两个问题。首先,SwipeNet的骨干会产生多个高分辨率和语义丰富的超特征图,从而显着改善了小物体检测。其次,新型样品加权检测损失函数是为SwipeNet设计的,该损失函数的重点是学习高体重样本并忽略学习低体重样本。此外,受到人类教育过程的启发,该过程驱动了从易于强化的概念中学习的学习,我们在这里提出了CMA培训范式,该训练范式首先训练一个清洁的探测器,该检测器不受嘈杂数据的影响。然后,基于干净的检测器,培训了多个学习多种嘈杂数据的多个检测器,并将其纳入强烈的噪声免疫力的统一深层合奏中。在两个水下机器人采摘竞赛数据集(URPC2017和URPC2018)上进行的实验表明,所提出的SWIPENET+CMA框架在针对几种最先进的方法中实现了更好的对象检测准确性。
In recent years, 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 novel Sample-WeIghted hyPEr Network (SWIPENET), and a robust 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, a novel sample-weighted detection loss function is designed for SWIPENET, which focuses on learning high weight samples and ignore learning low weight samples. Moreover, inspired by the human education process that drives the learning from easy to hard concepts, we here propose the CMA training paradigm that first trains a clean detector which is free from the influence of noisy data. Then, based on the clean detector, multiple detectors focusing on learning diverse noisy data are trained and incorporated into a unified deep ensemble of strong noise immunity. Experiments on two underwater robot picking contest datasets (URPC2017 and URPC2018) show that the proposed SWIPENET+CMA framework achieves better accuracy in object detection against several state-of-the-art approaches.