Spatial Likelihood Voting with Self-Knowledge Distillation for Weakly Supervised Object Detection
Ze Chen, Zhihang Fu, Jianqiang Huang, Mingyuan Tao, Rongxin Jiang,, Xiang Tian, Yaowu Chen, Xian-sheng Hua

TL;DR
This paper introduces SLV-SD Net, a novel weakly supervised object detection framework that uses spatial likelihood voting and self-knowledge distillation to improve localization accuracy without bounding box annotations.
Contribution
The paper proposes a new WSOD framework combining spatial likelihood voting and self-knowledge distillation, achieving state-of-the-art results on standard datasets.
Findings
Achieves new state-of-the-art performance on PASCAL VOC and MS-COCO datasets.
Effectively localizes entire objects rather than just salient parts.
Improves feature representation through self-knowledge distillation.
Abstract
Weakly supervised object detection (WSOD), which is an effective way to train an object detection model using only image-level annotations, has attracted considerable attention from researchers. However, most of the existing methods, which are based on multiple instance learning (MIL), tend to localize instances to the discriminative parts of salient objects instead of the entire content of all objects. In this paper, we propose a WSOD framework called the Spatial Likelihood Voting with Self-knowledge Distillation Network (SLV-SD Net). In this framework, we introduce a spatial likelihood voting (SLV) module to converge region proposal localization without bounding box annotations. Specifically, in every iteration during training, all the region proposals in a given image act as voters voting for the likelihood of each category in the spatial dimensions. After dilating the alignment on…
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