Papers Read on AI

Excavating the Potential Capacity of Self-Supervised Monocular Depth Estimation


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In this paper, we show theoretical and empirical evidence that the potential capacity of self-supervised monocular depth estimation can be excavated without increasing this cost. In particular, we propose (1) a novel data augmentation approach called data grafting, which forces the model to explore more cues to infer depth besides the vertical image position, (2) an exploratory self-distillation loss, which is supervised by the self-distillation label generated by our new post-processing method selective post-processing, and (3) the full-scale network, designed to endow the encoder with the specialization of depth estimation task and enhance the representational power of the model. Extensive experiments show that our contributions can bring significant performance improvement to the baseline with even less computational overhead, and our model, named EPCDepth, surpasses the previous state-of-the-art methods even those supervised by additional constraints. Code is available at https://github.com/prstrive/EPCDepth.
2021: Rui Peng, Ronggang Wang, Yawen Lai, Luyang Tang, Yangang Cai
https://arxiv.org/pdf/2109.12484v1.pdf
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