based sparse regularization plays a central role in compressive sensing and image processing. In this paper, we propose DecNet, as an unfolded network derived from a variational decomposition model incorporating related sparse regularization and solved by scaled alternating direction method of multipliers (ADMM). DecNet effectively decomposes an input image into a sparse feature and a learned dense feature, and thus helps the subsequent sparse feature related operations. Based on this, we develop DecNet+, a learnable architecture framework consisting of our DecNet and a segmentation module which operates over extracted sparse features instead of original images. This architecture combines well the benefits of mathematical modeling and data-driven approaches. To our best knowledge, this is the first study to incorporate mathematical image prior into feature extraction in segmentation network structures. Moreover, our DecNet+ framework can be easily extended to 3D case. We evaluate the effectiveness of DecNet+ on two commonly encountered sparse segmentation tasks: retinal vessel segmentation in medical image processing and pavement crack detection in industrial abnormality identification. Experimental results on different datasets demonstrate that, our DecNet+ architecture with various lightweight segmentation modules can achieve equal or better performance than their enlarged versions respectively. This leads to especially practical advantages on resource-limited devices.
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