MRF-UNets: Searching UNet with Markov Random Fields

Zifu Wang, Matthew B. Blaschko
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引用次数: 3

Abstract

UNet [27] is widely used in semantic segmentation due to its simplicity and effectiveness. However, its manually-designed architecture is applied to a large number of problem settings, either with no architecture optimizations, or with manual tuning, which is time consuming and can be sub-optimal. In this work, firstly, we propose Markov Random Field Neural Architecture Search (MRF-NAS) that extends and improves the recent Adaptive and Optimal Network Width Search (AOWS) method [4] with (i) a more general MRF framework (ii) diverse M-best loopy inference (iii) differentiable parameter learning. This provides the necessary NAS framework to efficiently explore network architectures that induce loopy inference graphs, including loops that arise from skip connections. With UNet as the backbone, we find an architecture, MRF-UNet, that shows several interesting characteristics. Secondly, through the lens of these characteristics, we identify the sub-optimality of the original UNet architecture and further improve our results with MRF-UNetV2. Experiments show that our MRF-UNets significantly outperform several benchmarks on three aerial image datasets and two medical image datasets while maintaining low computational costs. The code is available at: https://github.com/zifuwanggg/MRF-UNets.
mrf -UNet:用马尔可夫随机场搜索UNet
UNet[27]因其简单有效而被广泛应用于语义分割。然而,它的手工设计的体系结构应用于大量的问题设置,要么没有进行体系结构优化,要么进行了手动调优,这既耗时又可能不是最优的。在这项工作中,首先,我们提出了马尔可夫随机场神经架构搜索(MRF- nas),它扩展和改进了最近的自适应和最优网络宽度搜索(AOWS)方法[4],具有(i)更通用的MRF框架(ii)多样化的m -最佳环路推理(iii)可微参数学习。这提供了必要的NAS框架,以有效地探索导致循环推理图的网络体系结构,包括由跳过连接产生的循环。以UNet为骨干,我们发现了一个架构,MRF-UNet,它显示了几个有趣的特征。其次,通过这些特征,我们确定了原始UNet架构的次优性,并进一步改进了MRF-UNetV2的结果。实验表明,我们的MRF-UNets在三个航空图像数据集和两个医学图像数据集上显著优于几个基准,同时保持较低的计算成本。代码可从https://github.com/zifuwanggg/MRF-UNets获得。
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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