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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 291300 of 339 papers

TitleStatusHype
Real-time Keypoints Detection for Autonomous Recovery of the Unmanned Ground Vehicle0
Refinement Module based on Parse Graph of Feature Map for Human Pose Estimation0
Reinforcement learning using Deep Q Networks and Q learning accurately localizes brain tumors on MRI with very small training sets0
Rewards-based image analysis in microscopy0
RIDE: Self-Supervised Learning of Rotation-Equivariant Keypoint Detection and Invariant Description for Endoscopy0
Robust Automatic Monocular Vehicle Speed Estimation for Traffic Surveillance0
Rotation-Equivariant Keypoint Detection0
SD2Event:Self-supervised Learning of Dynamic Detectors and Contextual Descriptors for Event Cameras0
Self-supervised 3D Patient Modeling with Multi-modal Attentive Fusion0
Self-supervised Interest Point Detection and Description for Fisheye and Perspective Images0
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