SOSNet: Second Order Similarity Regularization for Local Descriptor Learning
Yurun Tian1,2; Xin Yu3; Bin Fan1; Fuchao Wu1; Huub Heijen4; Vassileios Balntas4
2019-06
会议日期2019-6
会议地点美国 长滩
英文摘要

Despite the fact that Second Order Similarity(SOS) has been used with significant success in tasks such as graph matching and clustering, it has not been exploited for learning local descriptors.
In this work, we explore the potential of SOS in the field of descriptor learning by building upon the intuition that a positive pair of matching points should exhibit similar distances with respect to other points in the embedding space. 
Thus, we propose a novel regularization term, named Second Order Similarity Regularization(SOSR), that follows this principle. 
By incorporating SOSR into training, our learned descriptor achieves state-of-the-art performance on several challenging benchmarks containing distinct tasks ranging from local patch retrieval to structure from motion. 
Furthermore, by designing a von Mises-Fischer distribution based evaluation method, we link the utilization of the descriptor space to the matching performance, thus demonstrating the effectiveness of our proposed SOSR.
Extensive experimental results, empirical evidence, and in-depth analysis are provided, indicating that SOSR can significantly boost the matching performance of the learned descriptor. 

内容类型会议论文
源URL[http://ir.ia.ac.cn/handle/173211/23810]  
专题自动化研究所_模式识别国家重点实验室_机器人视觉团队
通讯作者Bin Fan
作者单位1.中国科学院自动化研究所
2.中国科学院大学
3.澳大利亚国立大学
4.Scape Technologies, UK
推荐引用方式
GB/T 7714
Yurun Tian,Xin Yu,Bin Fan,et al. SOSNet: Second Order Similarity Regularization for Local Descriptor Learning[C]. 见:. 美国 长滩. 2019-6.
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