Litcius/Paper detail

An Adaptive and Robust Edge Detection Method Based on Edge Proportion Statistics

Yang Liu, Zongwu Xie, Hong Liu

2020IEEE Transactions on Image Processing84 citationsDOI

Abstract

Edge detection is one of the most fundamental operations in the field of image analysis and computer vision as a critical preprocessing step for high-level tasks. It is difficult to give a generic threshold that works well on all images as the image contents are totally different. This paper presents an adaptive, robust and effective edge detector for real-time applications. According to the two-dimensional entropy, the images can be clarified into three groups, each attached with a reference percentage value based on the edge proportion statistics. Compared with the attached points along the gradient direction, anchor points were extracted with high probability to be edge pixels. Taking the segment direction into account, these points were then jointed into different edge segments, each of which was a clean, contiguous, 1-pixel wide chain of pixels. Experimental results indicate that the proposed edge detector outperforms the traditional edge following methods in terms of detection accuracy. Besides, the detection results can be used as the input information for post-processing applications in real-time.

Topics & Concepts

Edge detectionPixelArtificial intelligenceEnhanced Data Rates for GSM EvolutionPreprocessorComputer visionEntropy (arrow of time)Computer scienceDetectorCanny edge detectorMorphological gradientImage processingDeriche edge detectorPattern recognition (psychology)MathematicsImage (mathematics)Quantum mechanicsTelecommunicationsPhysicsMedical Image Segmentation TechniquesImage and Object Detection TechniquesImage Retrieval and Classification Techniques
An Adaptive and Robust Edge Detection Method Based on Edge Proportion Statistics | Litcius