IVCVLGDec 11, 2019

UNet++: Redesigning Skip Connections to Exploit Multiscale Features in Image Segmentation

arXiv:1912.05074v23665 citationsHas Code
Originality Incremental advance
AI Analysis

This work addresses segmentation challenges in medical imaging, offering improved accuracy and efficiency for tasks like semantic and instance segmentation, though it is incremental as it builds on existing U-Net architectures.

The paper tackled limitations in U-Net and FCN models for medical image segmentation by proposing UNet++, which redesigns skip connections and uses an ensemble approach to improve flexibility and depth optimization. The result showed consistent outperformance of baseline models across six datasets, with pruned versions achieving significant speedup and only modest performance degradation.

The state-of-the-art models for medical image segmentation are variants of U-Net and fully convolutional networks (FCN). Despite their success, these models have two limitations: (1) their optimal depth is apriori unknown, requiring extensive architecture search or inefficient ensemble of models of varying depths; and (2) their skip connections impose an unnecessarily restrictive fusion scheme, forcing aggregation only at the same-scale feature maps of the encoder and decoder sub-networks. To overcome these two limitations, we propose UNet++, a new neural architecture for semantic and instance segmentation, by (1) alleviating the unknown network depth with an efficient ensemble of U-Nets of varying depths, which partially share an encoder and co-learn simultaneously using deep supervision; (2) redesigning skip connections to aggregate features of varying semantic scales at the decoder sub-networks, leading to a highly flexible feature fusion scheme; and (3) devising a pruning scheme to accelerate the inference speed of UNet++. We have evaluated UNet++ using six different medical image segmentation datasets, covering multiple imaging modalities such as computed tomography (CT), magnetic resonance imaging (MRI), and electron microscopy (EM), and demonstrating that (1) UNet++ consistently outperforms the baseline models for the task of semantic segmentation across different datasets and backbone architectures; (2) UNet++ enhances segmentation quality of varying-size objects -- an improvement over the fixed-depth U-Net; (3) Mask RCNN++ (Mask R-CNN with UNet++ design) outperforms the original Mask R-CNN for the task of instance segmentation; and (4) pruned UNet++ models achieve significant speedup while showing only modest performance degradation. Our implementation and pre-trained models are available at https://github.com/MrGiovanni/UNetPlusPlus.

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