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arxiv 1605.02264 v2 pith:CDT5DPD4 submitted 2016-05-08 cs.CV

Laplacian Pyramid Reconstruction and Refinement for Semantic Segmentation

classification cs.CV
keywords featuremapssegmentationarchitectureslaplacianmakespyramidreconstruction
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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CNN architectures have terrific recognition performance but rely on spatial pooling which makes it difficult to adapt them to tasks that require dense, pixel-accurate labeling. This paper makes two contributions: (1) We demonstrate that while the apparent spatial resolution of convolutional feature maps is low, the high-dimensional feature representation contains significant sub-pixel localization information. (2) We describe a multi-resolution reconstruction architecture based on a Laplacian pyramid that uses skip connections from higher resolution feature maps and multiplicative gating to successively refine segment boundaries reconstructed from lower-resolution maps. This approach yields state-of-the-art semantic segmentation results on the PASCAL VOC and Cityscapes segmentation benchmarks without resorting to more complex random-field inference or instance detection driven architectures.

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    DeepLabv3 improves semantic segmentation by capturing multi-scale context with cascaded or parallel atrous convolutions and adding global context to ASPP, achieving better results on PASCAL VOC 2012 without DenseCRF p...