A Robust Multimodal Remote Sensing Image Registration Method and System Using Steerable Filters with First- and Second-order Gradients
Yuanxin Ye, Bai Zhu, Tengfeng Tang, Chao Yang, Qizhi Xu, Guo Zhang

TL;DR
This paper introduces a robust multimodal remote sensing image registration system that combines steerable filters with gradient information, improving accuracy and efficiency over existing methods.
Contribution
It proposes a novel structural descriptor using steerable filters with multi-scale first- and second-order gradients, and a fast similarity measure for improved multimodal image registration.
Findings
Superior registration accuracy compared to state-of-the-art methods
Enhanced computational efficiency over existing software
Effective handling of nonlinear radiometric differences and geometric distortions
Abstract
Co-registration of multimodal remote sensing images is still an ongoing challenge because of nonlinear radiometric differences (NRD) and significant geometric distortions (e.g., scale and rotation changes) between these images. In this paper, a robust matching method based on the Steerable filters is proposed consisting of two critical steps. First, to address severe NRD, a novel structural descriptor named the Steerable Filters of first- and second-Order Channels (SFOC) is constructed, which combines the first- and second-order gradient information by using the steerable filters with a multi-scale strategy to depict more discriminative structure features of images. Then, a fast similarity measure is established called Fast Normalized Cross-Correlation (Fast-NCCSFOC), which employs the Fast Fourier Transform technique and the integral image to improve the matching efficiency.…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Medical Image Segmentation Techniques · Robotics and Sensor-Based Localization
