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arxiv: 1301.3572 · v2 · pith:PB4GFYSFnew · submitted 2013-01-16 · 💻 cs.CV

Indoor Semantic Segmentation using depth information

classification 💻 cs.CV
keywords depthindoorfeaturesinformationscenessegmentationaccuracyaddresses
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This work addresses multi-class segmentation of indoor scenes with RGB-D inputs. While this area of research has gained much attention recently, most works still rely on hand-crafted features. In contrast, we apply a multiscale convolutional network to learn features directly from the images and the depth information. We obtain state-of-the-art on the NYU-v2 depth dataset with an accuracy of 64.5%. We illustrate the labeling of indoor scenes in videos sequences that could be processed in real-time using appropriate hardware such as an FPGA.

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