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 self-training correspondence


Unsupervised Learning of Object Landmarks via Self-Training Correspondence

Neural Information Processing Systems

This paper addresses the problem of unsupervised discovery of object landmarks. We take a different path compared to that of existing works, based on 2 novel perspectives: (1) Self-training: starting from generic keypoints, we propose a self-training approach where the goal is to learn a detector that improves itself becoming more and more tuned to object landmarks.



Review for NeurIPS paper: Unsupervised Learning of Object Landmarks via Self-Training Correspondence

Neural Information Processing Systems

Additional Feedback: Detailed feedback: 1. Authors state that "[other] methods, despite presenting consistent results for various object categories, have also their own limitations such as discovering landmarks with no clear semantic meaning." This claim is rather strong since the proposed method also does not guarantee any clear semantic meaning for object landmarks discovered by their method. That work actually reports better accuracy on BBCPose than the proposed method and hence should be also included. Since the paper is trying to distinguish between "keypoints/landmarks" and "object landmarks" it would be helpful to have a clear definition and use them consistently. For example, in the introduction, the three words are used interchangeably but then in the section 3 "keypoints and landmarks" refer to very different entities than "object landmarks".


Review for NeurIPS paper: Unsupervised Learning of Object Landmarks via Self-Training Correspondence

Neural Information Processing Systems

This submission proposes an approach to unsupervised object landmark discovery. It initially received four reviews with mixed positive and negative scores (6,7,5,5). The rebuttal addressed some of the remaining concerns, which resulted in an increase in scores to (7,7,6,6). For these reasons, the AC's recommendation is to accept this submission for presentation as a poster, with a request for the authors to carefully revise the manuscript for the camera ready version to address the remaining concerns of the reviewers and improve the presentation clarity.


Unsupervised Learning of Object Landmarks via Self-Training Correspondence

Neural Information Processing Systems

This paper addresses the problem of unsupervised discovery of object landmarks. We take a different path compared to that of existing works, based on 2 novel perspectives: (1) Self-training: starting from generic keypoints, we propose a self-training approach where the goal is to learn a detector that improves itself becoming more and more tuned to object landmarks. Compared to previous works, our approach can learn landmarks that are more flexible in terms of capturing large changes in viewpoint. We show the favourable properties of our method on a variety of difficult datasets including LS3D, BBCPose and Human3.6M.