C-MIDN: Coupled Multiple Instance Detection Network With Segmentation Guidance for Weakly Supervised Object Detection

Gao Yan, B. Liu, Nan Guo, Xiaochun Ye, Fang Wan, Haihang You, Dongrui Fan
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引用次数: 96

Abstract

Weakly supervised object detection (WSOD) that only needs image-level annotations has obtained much attention recently. By combining convolutional neural network with multiple instance learning method, Multiple Instance Detection Network (MIDN) has become the most popular method to address the WSOD problem and been adopted as the initial model in many works. We argue that MIDN inclines to converge to the most discriminative object parts, which limits the performance of methods based on it. In this paper, we propose a novel Coupled Multiple Instance Detection Network (C-MIDN) to address this problem. Specifically, we use a pair of MIDNs, which work in a complementary manner with proposal removal. The localization information of the MIDNs is further coupled to obtain tighter bounding boxes and localize multiple objects. We also introduce a Segmentation Guided Proposal Removal (SGPR) algorithm to guarantee the MIL constraint after the removal and ensure the robustness of C-MIDN. Through a simple implementation of the C-MIDN with online detector refinement, we obtain 53.6% and 50.3% mAP on the challenging PASCAL VOC 2007 and 2012 benchmarks respectively, which significantly outperform the previous state-of-the-arts.
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弱监督目标检测的分割制导耦合多实例检测网络
仅需要图像级注释的弱监督目标检测(WSOD)近年来受到了广泛关注。多实例检测网络(multiple instance Detection network, MIDN)将卷积神经网络与多实例学习方法相结合,成为解决WSOD问题最流行的方法,并在许多研究中被用作初始模型。我们认为,MIDN倾向于收敛到最具区别性的对象部分,这限制了基于它的方法的性能。在本文中,我们提出了一种新的耦合多实例检测网络(C-MIDN)来解决这个问题。具体来说,我们使用一对midn,它们与提案删除以互补的方式工作。进一步耦合midn的定位信息,得到更紧密的边界框,实现对多个对象的定位。为了保证去除后的MIL约束,保证C-MIDN的鲁棒性,我们还引入了一种分割引导提案去除(segguided Proposal Removal, SGPR)算法。通过一个简单的C-MIDN实现和在线检测器改进,我们在具有挑战性的PASCAL VOC 2007和2012基准测试中分别获得了53.6%和50.3%的mAP,显著优于之前的最先进水平。
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