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Papers/Light-Weight RefineNet for Real-Time Semantic Segmentation

Light-Weight RefineNet for Real-Time Semantic Segmentation

Vladimir Nekrasov, Chunhua Shen, Ian Reid

2018-10-08Real-Time Semantic SegmentationSegmentationSemantic SegmentationImage Segmentation
PaperPDFCodeCode

Abstract

We consider an important task of effective and efficient semantic image segmentation. In particular, we adapt a powerful semantic segmentation architecture, called RefineNet, into the more compact one, suitable even for tasks requiring real-time performance on high-resolution inputs. To this end, we identify computationally expensive blocks in the original setup, and propose two modifications aimed to decrease the number of parameters and floating point operations. By doing that, we achieve more than twofold model reduction, while keeping the performance levels almost intact. Our fastest model undergoes a significant speed-up boost from 20 FPS to 55 FPS on a generic GPU card on 512x512 inputs with solid 81.1% mean iou performance on the test set of PASCAL VOC, while our slowest model with 32 FPS (from original 17 FPS) shows 82.7% mean iou on the same dataset. Alternatively, we showcase that our approach is easily mixable with light-weight classification networks: we attain 79.2% mean iou on PASCAL VOC using a model that contains only 3.3M parameters and performs only 9.3B floating point operations.

Results

TaskDatasetMetricValueModel
Semantic SegmentationNYU Depth v2Speed(ms/f)36Light-Weight-RefineNet-152
Semantic SegmentationNYU Depth v2mIoU44.4Light-Weight-RefineNet-152
Semantic SegmentationNYU Depth v2Speed(ms/f)27Light-Weight-RefineNet-101
Semantic SegmentationNYU Depth v2mIoU43.6Light-Weight-RefineNet-101
Semantic SegmentationNYU Depth v2Speed(ms/f)20Light-Weight-RefineNet-50
Semantic SegmentationNYU Depth v2mIoU41.7Light-Weight-RefineNet-50
10-shot image generationNYU Depth v2Speed(ms/f)36Light-Weight-RefineNet-152
10-shot image generationNYU Depth v2mIoU44.4Light-Weight-RefineNet-152
10-shot image generationNYU Depth v2Speed(ms/f)27Light-Weight-RefineNet-101
10-shot image generationNYU Depth v2mIoU43.6Light-Weight-RefineNet-101
10-shot image generationNYU Depth v2Speed(ms/f)20Light-Weight-RefineNet-50
10-shot image generationNYU Depth v2mIoU41.7Light-Weight-RefineNet-50

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