1. Review of Wide-Baseline Stereo Image Matching Based on Deep Learning
- Author
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Fei Meng, Guobiao Yao, Alper Yilmaz, and Li Zhang
- Subjects
affine invariant feature ,Matching (statistics) ,business.industry ,Computer science ,Science ,Deep learning ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,deep learning ,convolutional neural network ,Contrast (statistics) ,image matching ,Convolutional neural network ,Task (project management) ,General Earth and Planetary Sciences ,Computer vision ,wide-baseline stereo image ,Artificial intelligence ,business ,Focus (optics) ,Baseline (configuration management) ,Feature detection (computer vision) - Abstract
Strong geometric and radiometric distortions often exist in optical wide-baseline stereo images, and some local regions can include surface discontinuities and occlusions. Digital photogrammetry and computer vision researchers have focused on automatic matching for such images. Deep convolutional neural networks, which can express high-level features and their correlation, have received increasing attention for the task of wide-baseline image matching, and learning-based methods have the potential to surpass methods based on handcrafted features. Therefore, we focus on the dynamic study of wide-baseline image matching and review the main approaches of learning-based feature detection, description, and end-to-end image matching. Moreover, we summarize the current representative research using stepwise inspection and dissection. We present the results of comprehensive experiments on actual wide-baseline stereo images, which we use to contrast and discuss the advantages and disadvantages of several state-of-the-art deep-learning algorithms. Finally, we conclude with a description of the state-of-the-art methods and forecast developing trends with unresolved challenges, providing a guide for future work.
- Published
- 2021