RIFT: Multi-modal Image Matching Based on Radiation-invariant Feature Transform
Jiayuan Li, Qingwu Hu, Mingyao Ai

TL;DR
RIFT is a novel multi-modal image matching algorithm that uses radiation-invariant features, outperforming traditional methods like SIFT across various challenging datasets by employing phase congruency and a maximum index map.
Contribution
RIFT introduces a radiation-invariant feature transform using phase congruency and a maximum index map, achieving robustness to nonlinear radiation distortions and rotation invariance in multi-modal images.
Findings
RIFT outperforms SIFT and SAR-SIFT on diverse multi-modal datasets.
RIFT maintains high matching accuracy despite nonlinear radiation distortions.
The source code and datasets are publicly available.
Abstract
Traditional feature matching methods such as scale-invariant feature transform (SIFT) usually use image intensity or gradient information to detect and describe feature points; however, both intensity and gradient are sensitive to nonlinear radiation distortions (NRD). To solve the problem, this paper proposes a novel feature matching algorithm that is robust to large NRD. The proposed method is called radiation-invariant feature transform (RIFT). There are three main contributions in RIFT: first, RIFT uses phase congruency (PC) instead of image intensity for feature point detection. RIFT considers both the number and repeatability of feature points, and detects both corner points and edge points on the PC map. Second, RIFT originally proposes a maximum index map (MIM) for feature description. MIM is constructed from the log-Gabor convolution sequence and is much more robust to NRD than…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Robotics and Sensor-Based Localization · Advanced Vision and Imaging
Methodspc
