MFSNet: A Multi Focus Segmentation Network for Skin Lesion Segmentation

27 Mar 2022  ·  Hritam Basak, Rohit Kundu, Ram Sarkar ·

Segmentation is essential for medical image analysis to identify and localize diseases, monitor morphological changes, and extract discriminative features for further diagnosis. Skin cancer is one of the most common types of cancer globally, and its early diagnosis is pivotal for the complete elimination of malignant tumors from the body. This research develops an Artificial Intelligence (AI) framework for supervised skin lesion segmentation employing the deep learning approach. The proposed framework, called MFSNet (Multi-Focus Segmentation Network), uses differently scaled feature maps for computing the final segmentation mask using raw input RGB images of skin lesions. In doing so, initially, the images are preprocessed to remove unwanted artifacts and noises. The MFSNet employs the Res2Net backbone, a recently proposed convolutional neural network (CNN), for obtaining deep features used in a Parallel Partial Decoder (PPD) module to get a global map of the segmentation mask. In different stages of the network, convolution features and multi-scale maps are used in two boundary attention (BA) modules and two reverse attention (RA) modules to generate the final segmentation output. MFSNet, when evaluated on three publicly available datasets: $PH^2$, ISIC 2017, and HAM10000, outperforms state-of-the-art methods, justifying the reliability of the framework. The relevant codes for the proposed approach are accessible at https://github.com/Rohit-Kundu/MFSNet

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Semantic Segmentation HAM10000 MFSNet Average Dice 90.6 # 1
Average IOU 90.2 # 1
Skin Lesion Segmentation ISIC 2017 MFSNet Mean IoU 97.4 # 1
Semantic Segmentation ISIC 2017 MFSNet Average Dice 98.7 # 1
Semantic Segmentation PH2 MFSNet Average Dice 95.4 # 1
Average IOU 0.914 # 1

Methods