Weakly supervised object detection (WSOD) has attracted more and more attention since it only uses image-level labels and can save huge annotation costs. Most of the WSOD methods use Multiple Instance Learning (MIL) as their basic framework, which regard it as an instance classification problem. However, these methods based on MIL tends to converge only on the most discriminate regions of different instances, rather than their corresponding complete regions, that is, insufficient integrity. Inspired by the habit of observing things by the human, we propose a new method by comparing the initial proposals and the extension ones to optimize those initial proposals. Specifically, we propose one new strategy for WSOD by involving contrastive proposal extension (CPE), which consists of multiple directional contrastive proposal extensions (D-CPE), and each D-CPE contains encoders based on LSTM network and corresponding decoders. Firstly, the boundary of initial proposals in MIL is extended to different positions according to well-designed sequential order. Then, CPE compares the extended proposal and the initial proposal by extracting the feature semantics of them using the encoders, and calculates the integrity of the initial proposal to optimize the score of the initial proposal. These contrastive contextual semantics will guide the basic WSOD to suppress bad proposals and improve the scores of good ones. In addition, a simple two-stream network is designed as the decoder to constrain the temporal coding of LSTM and improve the performance of WSOD further. Experiments on PASCAL VOC 2007, VOC 2012 and MS-COCO datasets show that our method has achieved the state-of-the-art results.
翻译:微弱监督对象探测(WSOD)吸引了越来越多的关注,因为它只使用图像级标签,可以节省巨大的批注费用。大多数WSOD方法使用多试学习(MIL)作为其基本框架,将之视为一个实例分类问题。然而,基于MIL的这些方法往往只在不同情况中最有区别的区域,而不是相应的完整区域,即完整性不足。由于人类观察事物的习惯,我们提出了一个新方法,通过比较初始建议和扩展建议来优化这些初始建议。具体地说,我们提出了一个新的WSOD战略,其中涉及对比性建议扩展(CPE),其中包括多方向对比性建议扩展(D-CPE),而每个D-CPE都包含基于LSTM网络和相应的解析器的编码器。首先,MIL的初始建议的范围扩大到不同的位置,按照精心设计的顺序排列的顺序排列。然后,CPE比较扩大的和初始建议,通过利用编码仪表来提取它们的特点拼图的特征。 COODD(CPE)在2007年的初始建议中,将精细度排序中,将精细的缩缩缩缩缩缩的缩缩缩缩缩图的缩图转化为缩图的缩图。