Abstract

Methods based on convolutional neural networks have improved the performance of biomedical image segmentation. However, most of these methods cannot efficiently segment objects of variable sizes and train on small and biased datasets, which are common for biomedical use cases. While methods exist that incorporate multi-scale fusion approaches to address the challenges arising with variable sizes, they usually use complex models that are more suitable for general semantic segmentation problems. In this paper, we propose a novel architecture called Multi-Scale Residual Fusion Network (MSRF-Net), which is specially designed for medical image segmentation. The proposed MSRF-Net is able to exchange multi-scale features of varying receptive fields using a Dual-Scale Dense Fusion (DSDF) block. Our DSDF block can exchange information rigorously across two different resolution scales, and our MSRF sub-network uses multiple DSDF blocks in sequence to perform multi-scale fusion. This allows the preservation of resolution, improved information flow and propagation of both high- and low-level features to obtain accurate segmentation maps. The proposed MSRF-Net allows to capture object variabilities and provides improved results on different biomedical datasets. Extensive experiments on MSRF-Net demonstrate that the proposed method outperforms the cutting-edge medical image segmentation methods on four publicly available datasets. We achieve the Dice Coefficient (DSC) of 0.9217, 0.9420, and 0.9224, 0.8824 on Kvasir-SEG, CVC-ClinicDB, 2018 Data Science Bowl dataset, and ISIC-2018 skin lesion segmentation challenge dataset respectively. We further conducted generalizability tests and achieved DSC of 0.7921 and 0.7575 on CVC-ClinicDB and Kvasir-SEG, respectively.

Highlights

  • M EDICAL image segmentation is an essential task in clinical diagnosis and has been extensively studied byA

  • The results demonstrate that the proposed MSRF-Net outperforms the State Of The Art (SOTA) segmentation methods on most standard computer vision evaluation metrics

  • We present the comparison of our MSRF-Net with other SOTA methods

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Summary

Introduction

The lack of standard annotation protocols for various imaging modalities and low image quality can influence annotation quality. Other factors such as the annotator’s attentiveness, type of display device, image-annotation software and data misinterpretation due to lightning conditions can affect the quality of annotations [4]. An alternative solution to manual image segmentation is an automated computer aided segmentation based diagnosis-assisting system that can provide a faster, more accurate, and more reliable solution to transform clinical procedures and improve patient care. Due to the diverse nature of medicalimaging data, computer aided diagnosis based segmentation models must be robust to variations in imaging modalities [5]

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