Chenxi Liu, Liang-Chieh Chen, Florian Schroff, Hartwig Adam, Wei Hua, Alan Yuille, Li Fei-Fei
Recently, Neural Architecture Search (NAS) has successfully identified neural network architectures that exceed human designed ones on large-scale image classification. In this paper, we study NAS for semantic image segmentation. Existing works often focus on searching the repeatable cell structure, while hand-designing the outer network structure that controls the spatial resolution changes. This choice simplifies the search space, but becomes increasingly problematic for dense image prediction which exhibits a lot more network level architectural variations. Therefore, we propose to search the network level structure in addition to the cell level structure, which forms a hierarchical architecture search space. We present a network level search space that includes many popular designs, and develop a formulation that allows efficient gradient-based architecture search (3 P100 GPU days on Cityscapes images). We demonstrate the effectiveness of the proposed method on the challenging Cityscapes, PASCAL VOC 2012, and ADE20K datasets. Auto-DeepLab, our architecture searched specifically for semantic image segmentation, attains state-of-the-art performance without any ImageNet pretraining.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Semantic Segmentation | ADE20K val | Pixel Accuracy | 81.72 | Auto-DeepLab-L |
| Semantic Segmentation | ADE20K val | mIoU | 43.98 | Auto-DeepLab-L |
| Semantic Segmentation | ADE20K | Validation mIoU | 43.98 | Auto-DeepLab-L |
| 10-shot image generation | ADE20K val | Pixel Accuracy | 81.72 | Auto-DeepLab-L |
| 10-shot image generation | ADE20K val | mIoU | 43.98 | Auto-DeepLab-L |
| 10-shot image generation | ADE20K | Validation mIoU | 43.98 | Auto-DeepLab-L |