4.5 Article

Robust deep kernel-based fuzzy clustering with spatial information for image segmentation

Journal

APPLIED INTELLIGENCE
Volume 53, Issue 1, Pages 23-48

Publisher

SPRINGER
DOI: 10.1007/s10489-022-03255-3

Keywords

Image segmentation; Fuzzy clustering; Auto-encoder; Deep learning; Kernel function; Neighborhood information; Robustness

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This paper proposes a clustering algorithm model based on deep neural network, which improves the robustness of the model by introducing adaptive loss function and entropy regularization. On this basis, the paper combines neighborhood information and kernel function to propose an image segmentation algorithm with stronger anti-noise performance.
Clustering algorithms with deep neural network has attracted wide attention to scholars. A deep fuzzy K-means clustering algorithm model on adaptive loss function and entropy regularization (DFKM) is proposed by combining automatic encoder and clustering algorithm. Although it introduces adaptive loss function and entropy regularization to improve the robustness of the model, its segmentation effect is not ideal for high noise. The research purpose of this paper is to focus on the anti-noise performance of image segmentation. Therefore, on the basis of DFKM, this paper focus on image segmentation, combine neighborhood median and mean information of current pixel, introduce neighborhood information of membership degree, and extend Euclidean distance to kernel space by using kernel function, propose a dual-neighborhood information constrained deep fuzzy clustering based on kernel function (KDFKMS). A large number of experimental results show that compared with DFKM and classical image segmentation algorithms, this algorithm has stronger anti-noise robustness.

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