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Learning Depth for Scene Reconstruction Using an Encoder-Decoder Model

  • Xiaohan Tu
  • , Cheng Xu
  • , Siping Liu
  • , Guoqi Xie
  • , Jing Huang
  • , Renfa Li
  • , Junsong Yuan
  • Key Laboratory for Embedded and Network Computing of Hunan Province
  • Hunan University

Research output: Contribution to journalArticlepeer-review

15 Scopus citations

Abstract

Depth estimation has received considerable attention and is often applied to visual simultaneous localization and mapping (SLAM) for scene reconstruction. At least to our knowledge, sufficiently reliable depth always fails to be provided for monocular depth estimation-based SLAM because new image features are rarely re-exploited effectively, local features are easily lost, and relative depth relationships among depth pixels are readily ignored in previous depth estimation methods. Based on inaccurate monocular depth estimation, SLAM still faces scale ambiguity problems. To accurately achieve scene reconstruction based on monocular depth estimation, this paper makes three contributions. (1) We design a depth estimation model (DEM), consisting of a precise encoder to re-exploit new features and a decoder to learn local features effectively. (2) We propose a loss function using the depth relationship of pixels to guide the training of DEM. (3) We design a modular SLAM system containing DEM, feature detection, descriptor computation, feature matching, pose prediction, keyframe extraction, loop closure detection, and pose-graph optimization for pixel-level scene reconstruction. Extensive experiments demonstrate that the DEM and DEM-based SLAM are effective. (1) Our DEM predicts more reliable depth than the state of the arts when inputs are RGB images, sparse depth, or the fusion of both on public datasets. (2) The DEM-based SLAM system achieves comparable accuracy as compared with well-known modular SLAM systems.

Original languageEnglish
Article number9091077
Pages (from-to)89300-89317
Number of pages18
JournalIEEE Access
Volume8
DOIs
StatePublished - 2020

Keywords

  • Convolutional neural networks
  • decoder
  • depth estimation
  • encoder
  • simultaneous localization and mapping

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