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Guided Upsampling Network for Real-Time Semantic Segmentation

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arxiv 1807.07466 v1 pith:DDBFLXMM submitted 2018-07-19 cs.CV

Guided Upsampling Network for Real-Time Semantic Segmentation

classification cs.CV
keywords upsamplingnetworkguidedhigh-resolutionmapsmodulesegmentationsemantic
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Semantic segmentation architectures are mainly built upon an encoder-decoder structure. These models perform subsequent downsampling operations in the encoder. Since operations on high-resolution activation maps are computationally expensive, usually the decoder produces output segmentation maps by upsampling with parameters-free operators like bilinear or nearest-neighbor. We propose a Neural Network named Guided Upsampling Network which consists of a multiresolution architecture that jointly exploits high-resolution and large context information. Then we introduce a new module named Guided Upsampling Module (GUM) that enriches upsampling operators by introducing a learnable transformation for semantic maps. It can be plugged into any existing encoder-decoder architecture with little modifications and low additional computation cost. We show with quantitative and qualitative experiments how our network benefits from the use of GUM module. A comprehensive set of experiments on the publicly available Cityscapes dataset demonstrates that Guided Upsampling Network can efficiently process high-resolution images in real-time while attaining state-of-the art performances.

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