Image as an IMU: Estimating Camera Motion from a Single Motion-Blurred Image

arXiv — cs.CVThursday, November 27, 2025 at 5:00:00 AM
  • A novel framework has been proposed for estimating camera motion from a single motion-blurred image, addressing the challenges faced in robotics and VR/AR applications due to fast camera movements. This method utilizes motion blur as a valuable cue, predicting a dense motion flow field and monocular depth map, ultimately recovering instantaneous camera velocity through a linear least squares problem.
  • This development is significant as it enhances the robustness of camera pose estimation methods, allowing for more accurate motion tracking in dynamic environments. By leveraging motion blur, the framework offers a new perspective on handling rapid camera movements, which are common in various applications.
  • The introduction of this framework aligns with ongoing advancements in computer vision and AI, where researchers are increasingly focusing on innovative techniques to improve object detection and scene understanding. This trend reflects a broader movement towards integrating advanced algorithms and machine learning models to enhance the capabilities of imaging technologies across multiple domains.
— via World Pulse Now AI Editorial System

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