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NeuralFusion: Online Depth Fusion in Latent Space

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arxiv 2011.14791 v2 pith:ZYUI3UGT submitted 2020-11-30 cs.CV

NeuralFusion: Online Depth Fusion in Latent Space

classification cs.CV
keywords fusiondepthrepresentationfeatureonlinesceneapproachlatent
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present a novel online depth map fusion approach that learns depth map aggregation in a latent feature space. While previous fusion methods use an explicit scene representation like signed distance functions (SDFs), we propose a learned feature representation for the fusion. The key idea is a separation between the scene representation used for the fusion and the output scene representation, via an additional translator network. Our neural network architecture consists of two main parts: a depth and feature fusion sub-network, which is followed by a translator sub-network to produce the final surface representation (e.g. TSDF) for visualization or other tasks. Our approach is an online process, handles high noise levels, and is particularly able to deal with gross outliers common for photometric stereo-based depth maps. Experiments on real and synthetic data demonstrate improved results compared to the state of the art, especially in challenging scenarios with large amounts of noise and outliers.

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