Edge Detection based on Channel Attention and Inter-region Independence Test
By: Ru-yu Yan, Da-Qing Zhang
Potential Business Impact:
Finds sharp edges, ignoring fuzzy noise.
Existing edge detection methods often suffer from noise amplification and excessive retention of non-salient details, limiting their applicability in high-precision industrial scenarios. To address these challenges, we propose CAM-EDIT, a novel framework that integrates Channel Attention Mechanism (CAM) and Edge Detection via Independence Testing (EDIT). The CAM module adaptively enhances discriminative edge features through multi-channel fusion, while the EDIT module employs region-wise statistical independence analysis (using Fisher's exact test and chi-square test) to suppress uncorrelated noise.Extensive experiments on BSDS500 and NYUDv2 datasets demonstrate state-of-the-art performance. Among the nine comparison algorithms, the F-measure scores of CAM-EDIT are 0.635 and 0.460, representing improvements of 19.2\% to 26.5\% over traditional methods (Canny, CannySR), and better than the latest learning based methods (TIP2020, MSCNGP). Noise robustness evaluations further reveal a 2.2\% PSNR improvement under Gaussian noise compared to baseline methods. Qualitative results exhibit cleaner edge maps with reduced artifacts, demonstrating its potential for high-precision industrial applications.
Similar Papers
Edge-preserving Image Denoising via Multi-scale Adaptive Statistical Independence Testing
CV and Pattern Recognition
Cleans up blurry pictures, finding sharp edges.
Edge Attention Module for Object Classification
CV and Pattern Recognition
Helps computers better tell objects apart.
CannyEdit: Selective Canny Control and Dual-Prompt Guidance for Training-Free Image Editing
CV and Pattern Recognition
Edits pictures precisely with words, looking real.