4.7 Article

Fast multi-feature image segmentation

Journal

APPLIED MATHEMATICAL MODELLING
Volume 90, Issue -, Pages 742-757

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.apm.2020.09.008

Keywords

Image segmentation; Mean shift algorithm; Kernel density estimator (KDE)

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This paper introduces a new competitive segmentation algorithm for grayscale images, utilizing a two-dimensional feature map incorporating grayscale value and local variance, and employing a more accurate approach with the Epanechnikov kernel function to reduce computational cost. Experimental results show that the proposed method produces segmented images with approximately 50% better visual perception quality compared to its competitors, while being approximately 1.8-2 times faster.
Multi-feature segmentation has demonstrated its superiority against one-dimensional feature approaches based on only grayscale information. Mean shift (MS) is an algorithm that has been used commonly for multi-feature segmentation. In spite of its interesting results, MS maintains a computational cost that is prohibitive for segmentation scenarios where the feature map consists of multi-dimensional features. In this paper, a new competitive segmentation algorithm for grayscale images is introduced. The proposed approach considers a two-dimensional feature map that includes the grayscale value and the local variance for each pixel in the image. To reduce the computational cost, the Mean shift (MS) algorithm is modified to operate with a very limited number of points from all available data. Under such conditions, two sets of elements are differentiated: involved data (the reduced dataset considered in the MS operation) and not involved data (the rest of the available data). Different from the classical MS, which employs Gaussian functions, in our approach, the process of estimating the feature map is carried out using a more accurate approach such as the Epanechnikov kernel function. Once the MS results are obtained, they are generalized to include the not involved data. Therefore, each unused element is assigned to the same cluster of the closest used data. Finally, clusters with the fewest elements are fused with other neighboring clusters. The proposed segmentation method has been compared with other state-of-art algorithms considering the full number of images from the Berkeley dataset. Experimental results confirm that the proposed scheme produces segmented images with a 50% better quality of visual perception approximately two times (approximate to 1.8 - 2) faster than its competitors. (C) 2020 Elsevier Inc. All rights reserved.

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