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arxiv 1808.01597 v1 pith:KJFQJ2W7 submitted 2018-08-05 cs.CV

Pixel-level Semantics Guided Image Colorization

classification cs.CV
keywords colorizationcolorobjectimagenetworksemanticbleedingbranch
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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While many image colorization algorithms have recently shown the capability of producing plausible color versions from gray-scale photographs, they still suffer from the problems of context confusion and edge color bleeding. To address context confusion, we propose to incorporate the pixel-level object semantics to guide the image colorization. The rationale is that human beings perceive and distinguish colors based on the object's semantic categories. We propose a hierarchical neural network with two branches. One branch learns what the object is while the other branch learns the object's colors. The network jointly optimizes a semantic segmentation loss and a colorization loss. To attack edge color bleeding we generate more continuous color maps with sharp edges by adopting a joint bilateral upsamping layer at inference. Our network is trained on PASCAL VOC2012 and COCO-stuff with semantic segmentation labels and it produces more realistic and finer results compared to the colorization state-of-the-art.

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  1. Deep Exemplar-based Video Colorization

    cs.CV 2019-06 unverdicted novelty 6.0

    A recurrent end-to-end network for exemplar-based video colorization that unifies semantic correspondence and color propagation with a temporal consistency loss.