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3 months ago

Corner Proposal Network for Anchor-free, Two-stage Object Detection

Kaiwen Duan Lingxi Xie Honggang Qi Song Bai Qingming Huang Qi Tian

Corner Proposal Network for Anchor-free, Two-stage Object Detection

Abstract

The goal of object detection is to determine the class and location of objects in an image. This paper proposes a novel anchor-free, two-stage framework which first extracts a number of object proposals by finding potential corner keypoint combinations and then assigns a class label to each proposal by a standalone classification stage. We demonstrate that these two stages are effective solutions for improving recall and precision, respectively, and they can be integrated into an end-to-end network. Our approach, dubbed Corner Proposal Network (CPN), enjoys the ability to detect objects of various scales and also avoids being confused by a large number of false-positive proposals. On the MS-COCO dataset, CPN achieves an AP of 49.2% which is competitive among state-of-the-art object detection methods. CPN also fits the scenario of computational efficiency, which achieves an AP of 41.6%/39.7% at 26.2/43.3 FPS, surpassing most competitors with the same inference speed. Code is available at https://github.com/Duankaiwen/CPNDet

Code Repositories

Duankaiwen/CPNDet
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
object-detection-on-cocoCPNDet (Hourglass-104, multi-scale)
AP50: 67.3
AP75: 53.7
APL: 62.4
APM: 51.9
APS: 31.0
Hardware Burden:
Operations per network pass:
box mAP: 49.2

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