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Keypoint Detection

Keypoint Detection is essential for analyzing and interpreting images in computer vision. It involves simultaneously detecting and localizing interesting points in an image. Keypoints, also known as interest points, are spatial locations or points in the image that define what is interesting or what stands out. They are invariant to image rotation, shrinkage, translation, distortion, etc. Keypoints examples are body joints, facial landmarks, or any other salient points in objects. Keypoints have uses in problems such as pose estimation, object detection and tracking, facial analysis, and augmented reality.

( Image credit: PifPaf: Composite Fields for Human Pose Estimation; "Learning to surf" by fotologic, license: CC-BY-2.0 )

Papers

Showing 251260 of 339 papers

TitleStatusHype
GoodPoint: unsupervised learning of keypoint detection and descriptionCode1
On Mutual Information in Contrastive Learning for Visual Representations0
Learning Local Features with Context Aggregation for Visual Localization0
Learning Human-Object Interaction Detection using Interaction PointsCode1
Multi-Person Pose Estimation with Enhanced Feature Aggregation and Selection0
High Accuracy Face Geometry Capture using a Smartphone Video0
Joint COCO and Mapillary Workshop at ICCV 2019 Keypoint Detection Challenge Track Technical Report: Distribution-Aware Coordinate Representation for Human Pose Estimation0
Learning Delicate Local Representations for Multi-Person Pose EstimationCode1
Towards High Performance Human Keypoint DetectionCode1
UR2KiD: Unifying Retrieval, Keypoint Detection, and Keypoint Description without Local Correspondence Supervision0
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