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Papers/Full-Resolution Residual Networks for Semantic Segmentatio...

Full-Resolution Residual Networks for Semantic Segmentation in Street Scenes

Tobias Pohlen, Alexander Hermans, Markus Mathias, Bastian Leibe

2016-11-24CVPR 2017 7Thermal Image SegmentationReal-Time Semantic SegmentationSegmentationAutonomous DrivingSemantic SegmentationImage Segmentation
PaperPDFCode(official)CodeCodeCode

Abstract

Semantic image segmentation is an essential component of modern autonomous driving systems, as an accurate understanding of the surrounding scene is crucial to navigation and action planning. Current state-of-the-art approaches in semantic image segmentation rely on pre-trained networks that were initially developed for classifying images as a whole. While these networks exhibit outstanding recognition performance (i.e., what is visible?), they lack localization accuracy (i.e., where precisely is something located?). Therefore, additional processing steps have to be performed in order to obtain pixel-accurate segmentation masks at the full image resolution. To alleviate this problem we propose a novel ResNet-like architecture that exhibits strong localization and recognition performance. We combine multi-scale context with pixel-level accuracy by using two processing streams within our network: One stream carries information at the full image resolution, enabling precise adherence to segment boundaries. The other stream undergoes a sequence of pooling operations to obtain robust features for recognition. The two streams are coupled at the full image resolution using residuals. Without additional processing steps and without pre-training, our approach achieves an intersection-over-union score of 71.8% on the Cityscapes dataset.

Results

TaskDatasetMetricValueModel
Semantic SegmentationMFN DatasetmIOU44.2FRRN
Semantic SegmentationCityscapes testFrame (fps)2.1FRRN
Semantic SegmentationCityscapes testTime (ms)469FRRN
Scene SegmentationMFN DatasetmIOU44.2FRRN
2D Object DetectionMFN DatasetmIOU44.2FRRN
10-shot image generationMFN DatasetmIOU44.2FRRN
10-shot image generationCityscapes testFrame (fps)2.1FRRN
10-shot image generationCityscapes testTime (ms)469FRRN

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