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arxiv 1902.04502 v1 pith:4V7WEXNO submitted 2019-02-12 cs.CV

Fast-SCNN: Fast Semantic Segmentation Network

classification cs.CV
keywords segmentationnetworkresolutioncomputationfastsemanticcityscapesdata
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The encoder-decoder framework is state-of-the-art for offline semantic image segmentation. Since the rise in autonomous systems, real-time computation is increasingly desirable. In this paper, we introduce fast segmentation convolutional neural network (Fast-SCNN), an above real-time semantic segmentation model on high resolution image data (1024x2048px) suited to efficient computation on embedded devices with low memory. Building on existing two-branch methods for fast segmentation, we introduce our `learning to downsample' module which computes low-level features for multiple resolution branches simultaneously. Our network combines spatial detail at high resolution with deep features extracted at lower resolution, yielding an accuracy of 68.0% mean intersection over union at 123.5 frames per second on Cityscapes. We also show that large scale pre-training is unnecessary. We thoroughly validate our metric in experiments with ImageNet pre-training and the coarse labeled data of Cityscapes. Finally, we show even faster computation with competitive results on subsampled inputs, without any network modifications.

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Cited by 3 Pith papers

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  2. GABI: Geometry-Aware Boundary Integration for Spacecraft Segmentation

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    GABI augments a convolutional backbone with an auxiliary distance-field prediction head to improve spacecraft segmentation accuracy and generalization under variable illumination while remaining lightweight.

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