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PixelNet: Representation of the pixels, by the pixels, and for the pixels

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arxiv 1702.06506 v1 pith:DR2VPC3R submitted 2017-02-21 cs.CV cs.LGcs.RO

PixelNet: Representation of the pixels, by the pixels, and for the pixels

classification cs.CV cs.LGcs.RO
keywords pixelsconvolutionaldatasetdetectionduringedgeefficientestimation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We explore design principles for general pixel-level prediction problems, from low-level edge detection to mid-level surface normal estimation to high-level semantic segmentation. Convolutional predictors, such as the fully-convolutional network (FCN), have achieved remarkable success by exploiting the spatial redundancy of neighboring pixels through convolutional processing. Though computationally efficient, we point out that such approaches are not statistically efficient during learning precisely because spatial redundancy limits the information learned from neighboring pixels. We demonstrate that stratified sampling of pixels allows one to (1) add diversity during batch updates, speeding up learning; (2) explore complex nonlinear predictors, improving accuracy; and (3) efficiently train state-of-the-art models tabula rasa (i.e., "from scratch") for diverse pixel-labeling tasks. Our single architecture produces state-of-the-art results for semantic segmentation on PASCAL-Context dataset, surface normal estimation on NYUDv2 depth dataset, and edge detection on BSDS.

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