Hyper-Fusion Network for Semi-Automatic Segmentation of Skin Lesions
Lei Bi, Michael Fulham, Jinman Kim

TL;DR
This paper introduces a hyper-fusion network that iteratively combines user inputs with image features across multiple stages to improve semi-automatic skin lesion segmentation, especially for challenging cases.
Contribution
The proposed hyper-fusion network (HFN) enables multi-stage fusion of user inputs and image features, surpassing early-fusion methods in accuracy and generalizability.
Findings
HFN outperforms state-of-the-art methods on ISIC 2017, ISIC 2016, and PH2 datasets.
HFN achieves higher segmentation accuracy for challenging skin lesions.
The iterative fusion approach enhances guidance from user inputs throughout the segmentation process.
Abstract
Automatic skin lesion segmentation methods based on fully convolutional networks (FCNs) are regarded as the state-of-the-art for accuracy. When there are, however, insufficient training data to cover all the variations in skin lesions, where lesions from different patients may have major differences in size/shape/texture, these methods failed to segment the lesions that have image characteristics, which are less common in the training datasets. FCN-based semi-automatic segmentation methods, which fuse user-inputs with high-level semantic image features derived from FCNs offer an ideal complement to overcome limitations of automatic segmentation methods. These semi-automatic methods rely on the automated state-of-the-art FCNs coupled with user-inputs for refinements, and therefore being able to tackle challenging skin lesions. However, there are a limited number of FCN-based…
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