Abstract

Segmentation is an open-ended research problem in various computer vision and image processing tasks. This pre-processing operation requires a robust edge detector to generate appealing results. However, the available approaches for edge detection underperform when applied to images corrupted by noise or impacted by poor imaging conditions. The problem becomes significant for images containing diabetic foot ulcers, which originate from people with varied skin color. Comparative performance evaluation of the edge detectors facilitates the process of deciding an appropriate method for image segmentation of diabetic foot ulcers. Our research discovered that the classical edge detectors cannot clearly locate ulcers in images with black-skin feet. In addition, these methods collapse for degraded input images. Therefore, the current research proposes a robust edge detector that can address some limitations of the previous attempts. The proposed method incorporates a hybrid diffusion-steered functional derived from the total variation and the Perona-Malik diffusivities, which have been reported to can effectively capture semantic features in images. The empirical results show that our method generates clearer and stronger edge maps with higher perceptual and objective qualities. More importantly, the proposed method offers lower computational times—an advantage that gives more insights into the possible application of the method in time-sensitive tasks.

Highlights

  • Statistics show that the number of people with diabetes has been exponentially increasing worldwide [1]

  • We employed several morphological operators to increase the accuracy of locating and connecting the edges of the ulcer area

  • A method has been proposed for detecting and locating diabetic foot ulcers in images and its performance was compared to the existing classical methods

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Summary

INTRODUCTION

Statistics show that the number of people with diabetes has been exponentially increasing worldwide [1]. Because the preliminary diagnosis of diabetes is relatively challenging with the existing conventional dermatological methods, (non-invasive) image processing techniques have been recently proposed which have demonstrated promising results [4]. The introduction of digital image processing for the detection and evaluation of ulcers and wounds has become one of the most important methods in linking and optimizing the results of the diabetic foot ulcers [6]. This paper proposes an image pre-processing edge detector for the accurate segmentation of diabetic foot ulcers in digital images. We first detect the diabetic foot ulcer edges from the images using the proposed method, which is based on the gradient-driven quadratic functional. The results show that our method outperforms the classical ones, signaling its possible applications in industrial settings

RELATED WORK
A SUMMARY OF VARIOUS EDGE DETECTORS USED IN IMAGE PROCESSING APPLICATIONS
Computing the Edges
Mathematical Morphology
PERFORMANCE EVALUATION
RESULTS AND DISCUSSION
CONCLUSION
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