CVApr 14, 2021

HoughNet: Integrating near and long-range evidence for visual detection

arXiv:2104.06773v215 citationsHas Code
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It addresses the problem of limited local evidence in object detection for computer vision applications, showing incremental improvements by extending voting mechanisms to multiple tasks.

The paper tackles object detection by introducing HoughNet, a voting-based method that integrates near and long-range evidence, achieving 46.4 AP on COCO, performing on par with state-of-the-art bottom-up methods and outperforming many one-stage and two-stage approaches.

This paper presents HoughNet, a one-stage, anchor-free, voting-based, bottom-up object detection method. Inspired by the Generalized Hough Transform, HoughNet determines the presence of an object at a certain location by the sum of the votes cast on that location. Votes are collected from both near and long-distance locations based on a log-polar vote field. Thanks to this voting mechanism, HoughNet is able to integrate both near and long-range, class-conditional evidence for visual recognition, thereby generalizing and enhancing current object detection methodology, which typically relies on only local evidence. On the COCO dataset, HoughNet's best model achieves $46.4$ $AP$ (and $65.1$ $AP_{50}$), performing on par with the state-of-the-art in bottom-up object detection and outperforming most major one-stage and two-stage methods. We further validate the effectiveness of our proposal in other visual detection tasks, namely, video object detection, instance segmentation, 3D object detection and keypoint detection for human pose estimation, and an additional "labels to photo" image generation task, where the integration of our voting module consistently improves performance in all cases. Code is available at https://github.com/nerminsamet/houghnet.

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