Progressive Fusion for Unsupervised Binocular Depth Estimation Using Cycled Networks

Andrea Pilzer*, Stéphane Lathuilière, Dan Xu, Mihai Marian Puscas, Elisa Ricci, Nicu Sebe

*Corresponding author for this work

Research output: Contribution to journalJournal Articlepeer-review

25 Citations (Scopus)

Abstract

Recent deep monocular depth estimation approaches based on supervised regression have achieved remarkable performance. However, they require costly ground truth annotations during training. To cope with this issue, in this paper we present a novel unsupervised deep learning approach for predicting depth maps. We introduce a new network architecture, named Progressive Fusion Network (PFN), that is specifically designed for binocular stereo depth estimation. This network is based on a multi-scale refinement strategy that combines the information provided by both stereo views. In addition, we propose to stack twice this network in order to form a cycle. This cycle approach can be interpreted as a form of data-augmentation since, at training time, the network learns both from the training set images (in the forward half-cycle) but also from the synthesized images (in the backward half-cycle). The architecture is jointly trained with adversarial learning. Extensive experiments on the publicly available datasets KITTI, Cityscapes and ApolloScape demonstrate the effectiveness of the proposed model which is competitive with other unsupervised deep learning methods for depth prediction.

Original languageEnglish
Article number8846077
Pages (from-to)2380-2395
Number of pages16
JournalIEEE Transactions on Pattern Analysis and Machine Intelligence
Volume42
Issue number10
DOIs
Publication statusPublished - 1 Oct 2020
Externally publishedYes

Bibliographical note

Publisher Copyright:
© 1979-2012 IEEE.

Keywords

  • Stereo depth estimation
  • convolutional neural networks (ConvNet)
  • cycle network
  • deep multi-scale fusion

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