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Unsupervised Adaptation for Deep Stereo

Authors :
Stefano Mattoccia
Luigi Di Stefano
Matteo Poggi
Alessio Tonioni
Tonioni, Alessio
Poggi, Matteo
Mattoccia, Stefano
Luigi Di, Stefano
Source :
ICCV
Publication Year :
2017
Publisher :
IEEE, 2017.

Abstract

Recent ground-breaking works have shown that deep neural networks can be trained end-to-end to regress dense disparity maps directly from image pairs. Computer generated imagery is deployed to gather the large data corpus required to train such networks, an additional fine-tuning allowing to adapt the model to work well also on real and possibly diverse environments. Yet, besides a few public datasets such as Kitti, the ground-truth needed to adapt the network to a new scenario is hardly available in practice. In this paper we propose a novel unsupervised adaptation approach that enables to fine-tune a deep learning stereo model without any ground-truth information. We rely on off-the-shelf stereo algorithms together with state-of-the-art confidence measures, the latter able to ascertain upon correctness of the measurements yielded by former. Thus, we train the network based on a novel loss-function that penalizes predictions disagreeing with the highly confident disparities provided by the algorithm and enforces a smoothness constraint. Experiments on popular datasets (KITTI 2012, KITTI 2015 and Middlebury 2014) and other challenging test images demonstrate the effectiveness of our proposal.

Details

Database :
OpenAIRE
Journal :
2017 IEEE International Conference on Computer Vision (ICCV)
Accession number :
edsair.doi.dedup.....6e4669dc07df9aa0063d6aa6da5d1ed8