噪声感知的全网络监督对象检测

Yunhang Shen, Rongrong Ji, Zhiwei Chen, Xiaopeng Hong, Feng Zheng, Jianzhuang Liu, Mingliang Xu, Q. Tian
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引用次数: 27

摘要

我们研究了在网络上使用单一图像级标签学习对象检测器的新兴任务,而不需要任何其他监督,如精确的注释或来自良好注释的基准数据集的额外图像。这种被称为完全网络监督对象检测的任务是极具挑战性的,因为网络上的图像级标签总是有噪声的,导致学习检测器的性能很差。在这项工作中,我们提出了一个端到端框架来共同学习网络监督检测器并减少噪声标签的负面影响。这种噪声是异质的,又可以分为背景噪声和前景噪声两类。对于背景噪声,我们提出了一种结合弱监督检测的残差学习结构,对背景噪声进行分解并对干净的数据进行建模。为了明确学习干净数据和噪声标签之间的残差特征,我们进一步提出了一个空间敏感的熵准则,该准则利用检测结果的条件分布来估计背景类别是噪声的置信度。在前景噪声方面,引入了bagging-mixup学习,在保持训练数据多样性的同时,抑制了来自错误标记图像的前景噪声信号。我们在流行的基准数据集上通过训练网络图像的检测器来评估所提出的方法,这些图像是由照片共享网站的相应类别标签检索的。大量的实验表明,我们的方法比最先进的方法有了显著的改进。
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Noise-Aware Fully Webly Supervised Object Detection
We investigate the emerging task of learning object detectors with sole image-level labels on the web without requiring any other supervision like precise annotations or additional images from well-annotated benchmark datasets. Such a task, termed as fully webly supervised object detection, is extremely challenging, since image-level labels on the web are always noisy, leading to poor performance of the learned detectors. In this work, we propose an end-to-end framework to jointly learn webly supervised detectors and reduce the negative impact of noisy labels. Such noise is heterogeneous, which is further categorized into two types, namely background noise and foreground noise. Regarding the background noise, we propose a residual learning structure incorporated with weakly supervised detection, which decomposes background noise and models clean data. To explicitly learn the residual feature between clean data and noisy labels, we further propose a spatially-sensitive entropy criterion, which exploits the conditional distribution of detection results to estimate the confidence of background categories being noise. Regarding the foreground noise, a bagging-mixup learning is introduced, which suppresses foreground noisy signals from incorrectly labelled images, whilst maintaining the diversity of training data. We evaluate the proposed approach on popular benchmark datasets by training detectors on web images, which are retrieved by the corresponding category tags from photo-sharing sites. Extensive experiments show that our method achieves significant improvements over the state-of-the-art methods.
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