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Papers/CascadePSP: Toward Class-Agnostic and Very High-Resolution...

CascadePSP: Toward Class-Agnostic and Very High-Resolution Segmentation via Global and Local Refinement

Ho Kei Cheng, Jihoon Chung, Yu-Wing Tai, Chi-Keung Tang

2020-05-06CVPR 2020 6Scene ParsingSegmentationSemantic SegmentationLand Cover Classification4k
PaperPDFCodeCode(official)

Abstract

State-of-the-art semantic segmentation methods were almost exclusively trained on images within a fixed resolution range. These segmentations are inaccurate for very high-resolution images since using bicubic upsampling of low-resolution segmentation does not adequately capture high-resolution details along object boundaries. In this paper, we propose a novel approach to address the high-resolution segmentation problem without using any high-resolution training data. The key insight is our CascadePSP network which refines and corrects local boundaries whenever possible. Although our network is trained with low-resolution segmentation data, our method is applicable to any resolution even for very high-resolution images larger than 4K. We present quantitative and qualitative studies on different datasets to show that CascadePSP can reveal pixel-accurate segmentation boundaries using our novel refinement module without any finetuning. Thus, our method can be regarded as class-agnostic. Finally, we demonstrate the application of our model to scene parsing in multi-class segmentation.

Results

TaskDatasetMetricValueModel
Semantic SegmentationBIGIoU93.93PSPNet + CascadePSP
Semantic SegmentationBIGmBA75.32PSPNet + CascadePSP
Semantic SegmentationBIGIoU92.79RefineNet + CascadePSP
Semantic SegmentationBIGmBA74.77RefineNet + CascadePSP
Semantic SegmentationBIGIoU92.23DeepLabV3+ + CascadePSP
Semantic SegmentationBIGmBA74.59DeepLabV3+ + CascadePSP
Semantic SegmentationBIGIoU77.87FCN + CascadePSP
Semantic SegmentationBIGmBA67.04FCN + CascadePSP
10-shot image generationBIGIoU93.93PSPNet + CascadePSP
10-shot image generationBIGmBA75.32PSPNet + CascadePSP
10-shot image generationBIGIoU92.79RefineNet + CascadePSP
10-shot image generationBIGmBA74.77RefineNet + CascadePSP
10-shot image generationBIGIoU92.23DeepLabV3+ + CascadePSP
10-shot image generationBIGmBA74.59DeepLabV3+ + CascadePSP
10-shot image generationBIGIoU77.87FCN + CascadePSP
10-shot image generationBIGmBA67.04FCN + CascadePSP

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