MKIS-Net: A Light-Weight Multi-Kernel Network for Medical Image Segmentation

T. M. Khan, Muhammad Arsalan, A. Robles-Kelly, E. Meijering
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引用次数: 6

Abstract

Image segmentation is an important task in medical imaging. It constitutes the backbone of a wide variety of clinical diagnostic methods, treatments, and computer-aided surgeries. In this paper, we propose a multi-kernel image segmentation net (MKIS-Net), which uses multiple kernels to create an efficient receptive field and enhance segmentation performance. As a result of its multi-kernel design, MKIS-Net is a light-weight architecture with a small number of trainable parameters. Moreover, these multi-kernel receptive fields also contribute to better segmentation results. We demonstrate the efficacy of MKIS-Net on several tasks including segmentation of retinal vessels, skin lesion segmentation, and chest X-ray segmentation. The performance of the proposed network is quite competitive, and often superior, in comparison to state-of-the-art methods. Moreover, in some cases MKIS-Net has more than an order of magnitude fewer trainable parameters than existing medical image segmentation alternatives and is at least four times smaller than other light-weight architectures.
MKIS-Net:用于医学图像分割的轻量级多核网络
图像分割是医学成像中的一项重要任务。它构成了各种临床诊断方法、治疗和计算机辅助手术的支柱。在本文中,我们提出了一种多核图像分割网络(MKIS-Net),它使用多个核来创建一个有效的接受场,提高分割性能。由于其多内核设计,MKIS-Net是一个轻量级架构,具有少量可训练参数。此外,这些多核接受域也有助于更好的分割结果。我们证明了MKIS-Net在视网膜血管分割、皮肤病变分割和胸部x射线分割等几个任务上的有效性。与最先进的方法相比,所提出的网络的性能相当有竞争力,而且往往更优越。此外,在某些情况下,MKIS-Net的可训练参数比现有的医学图像分割替代方案少一个数量级以上,并且比其他轻量级架构至少小四倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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