Tác giả
Jianing Qian, Anastasios Panagopoulos, Dinesh Jayaraman
Ngày xuất bản
2022/10/23
Sách
European Conference on Computer Vision
Trang
545-561
Nhà xuất bản
Springer Nature Switzerland
Mô tả
The locations of objects and their associated landmark keypoints can serve as versatile and semantically meaningful image representations. In natural scenes, these keypoints are often hierarchically grouped into sets corresponding to coherently moving objects and their moveable and deformable parts. Motivated by this observation, we propose Keypoint Pyramids, an approach to exploit this property for discovering keypoints without explicit supervision. Keypoint Pyramids discovers multi-level keypoint hierarchies satisfying three desiderata: comprehensiveness of the overall keypoint representation, coarse-to-fine informativeness of individual hierarchy levels, and parent-child associations of keypoints across levels. On human pose and tabletop multi-object scenes, our experimental results show that Keypoint Pyramids jointly discovers object keypoints and their natural hierarchical groupings, with finer levels …
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J Qian, A Panagopoulos, D Jayaraman - European Conference on Computer Vision, 2022