SAda-Net: A Self-Supervised Adaptive Stereo Estimation CNN For Remote Sensing Image Data

Activity: Talk or presentationTalk at conference or symposiumScience to science

Description

Stereo estimation has made many advancements in recent years with the introduction of deep-learning. However the traditional supervised approach to deep-learning requires the creation of accurate and plentiful ground-truth data, which is expensive to create and not available in many situations. This is especially true for remote sensing applications, where there is an excess of available data without proper ground truth. To tackle this problem, we propose a self-supervised CNN with self-improving adaptive abilities. In the first iteration, the created disparity map is inaccurate and noisy. Leveraging the left-right consistency check, we get a sparse but more accurate disparity map which is used as an initial pseudo ground-truth. This pseudo ground-truth is then adapted and updated after every epoch in the training step of the network. We use the sum of inconsistent points in order to track the network convergence. The code for our method is publicly available at: https://github.com/thedodo/SAda-Net
Period3 Dec 2024
Event titleInternational Conference on Pattern Recognition, ICPR 2024
Event typeConference
LocationKolkata, IndiaShow on map
Degree of RecognitionInternational

Keywords

  • Remote Sensing
  • Machine Learning
  • Computer Vision