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4 months ago

Richer Convolutional Features for Edge Detection

Yun Liu; Ming-Ming Cheng; Xiaowei Hu; Kai Wang; Xiang Bai

Richer Convolutional Features for Edge Detection

Abstract

In this paper, we propose an accurate edge detector using richer convolutional features (RCF). Since objects in nature images have various scales and aspect ratios, the automatically learned rich hierarchical representations by CNNs are very critical and effective to detect edges and object boundaries. And the convolutional features gradually become coarser with receptive fields increasing. Based on these observations, our proposed network architecture makes full use of multiscale and multi-level information to perform the image-to-image edge prediction by combining all of the useful convolutional features into a holistic framework. It is the first attempt to adopt such rich convolutional features in computer vision tasks. Using VGG16 network, we achieve \sArt results on several available datasets. When evaluating on the well-known BSDS500 benchmark, we achieve ODS F-measure of \textbf{.811} while retaining a fast speed (\textbf{8} FPS). Besides, our fast version of RCF achieves ODS F-measure of \textbf{.806} with \textbf{30} FPS.

Code Repositories

giannifranchi/NAO_morpho
pytorch
Mentioned in GitHub
yun-liu/rcf
Official
pytorch

Benchmarks

BenchmarkMethodologyMetrics
edge-detection-on-biped-1RCF
Number of parameters (M): 14.8M
ODS: 0.849
edge-detection-on-mdbdRCF
ODS: 0.879

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