BiDFDC-Net: a dense connection network based on bi-directional feedback for skin image segmentation

Front Physiol. 2023 Jun 20:14:1173108. doi: 10.3389/fphys.2023.1173108. eCollection 2023.

Abstract

Accurate segmentation of skin lesions in dermoscopic images plays an important role in improving the survival rate of patients. However, due to the blurred boundaries of pigment regions, the diversity of lesion features, and the mutations and metastases of diseased cells, the effectiveness and robustness of skin image segmentation algorithms are still a challenging subject. For this reason, we proposed a bi-directional feedback dense connection network framework (called BiDFDC-Net), which can perform skin lesions accurately. Firstly, under the framework of U-Net, we integrated the edge modules into each layer of the encoder which can solve the problem of gradient vanishing and network information loss caused by network deepening. Then, each layer of our model takes input from the previous layer and passes its feature map to the densely connected network of subsequent layers to achieve information interaction and enhance feature propagation and reuse. Finally, in the decoder stage, a two-branch module was used to feed the dense feedback branch and the ordinary feedback branch back to the same layer of coding, to realize the fusion of multi-scale features and multi-level context information. By testing on the two datasets of ISIC-2018 and PH2, the accuracy on the two datasets was given by 93.51% and 94.58%, respectively.

Keywords: U-Net; bi-directional feedback; dense connection; image segmentation; skin.

Grants and funding

This work was supported by the National Natural Science Foundation of China (Nos 62102227, 51805124, and 62101206), Zhejiang Basic Public Welfare Research Project (Nos LZY22E050001, LZY22D010001, LGG19E050013, LZY21E060001, TGS23E030001, and LTGC23E050001), Science and Technology Major Projects of Quzhou (2021K29, 2022K56).