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SD-UNet: Stripping down U-Net for Segmentation of Biomedical Images on Platforms with Low Computational Budgets

机译:SD-UNet:剥离U-Net以便在计算预算较低的平台上分割生物医学图像

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摘要

During image segmentation tasks in computer vision, achieving high accuracy performance while requiring fewer computations and faster inference is a big challenge. This is especially important in medical imaging tasks but one metric is usually compromised for the other. To address this problem, this paper presents an extremely fast, small and computationally effective deep neural network called Stripped-Down UNet (SD-UNet), designed for the segmentation of biomedical data on devices with limited computational resources. By making use of depthwise separable convolutions in the entire network, we design a lightweight deep convolutional neural network architecture inspired by the widely adapted U-Net model. In order to recover the expected performance degradation in the process, we introduce a weight standardization algorithm with the group normalization method. We demonstrate that SD-UNet has three major advantages including: (i) smaller model size (23x smaller than U-Net); (ii) 8x fewer parameters; and (iii) faster inference time with a computational complexity lower than 8M floating point operations (FLOPs). Experiments on the benchmark dataset of the Internatioanl Symposium on Biomedical Imaging (ISBI) challenge for segmentation of neuronal structures in electron microscopic (EM) stacks and the Medical Segmentation Decathlon (MSD) challenge brain tumor segmentation (BRATs) dataset show that the proposed model achieves comparable and sometimes better results compared to the current state-of-the-art.
机译:在计算机视觉中进行图像分割任务期间,要实现高精度性能,同时需要较少的计算量和更快的推理速度,是一个巨大的挑战。这在医学成像任务中尤其重要,但是一个指标通常会折中另一个指标。为了解决这个问题,本文提出了一种称为Stripped-Down UNet(SD-UNet)的极快速,小型且计算有效的深度神经网络,该网络旨在用于在计算资源有限的设备上分割生物医学数据。通过在整个网络中使用深度可分离卷积,我们设计了一种轻量级的深度卷积神经网络体系结构,其灵感来自广泛采用的U-Net模型。为了恢复过程中预期的性能下降,我们引入了加权归一化算法和组归一化方法。我们证明SD-UNet具有三个主要优势,包括:(i)较小的模型尺寸(比U-Net小23倍); (ii)参数减少8倍; (iii)推理时间更快,且计算复杂度低于8M浮点运算(FLOP)。在国际生物医学成像研讨会(ISBI)挑战赛基准数据集上进行的电子显微镜(EM)堆栈神经元结构分割实验和医学分割十项全能(MSD)挑战脑肿瘤分割(BRATs)数据集实验表明,该模型可以实现与当前的最新技术相比具有可比性,有时甚至更好的结果。

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