ADAPTIVE MATCHING OF HIGH-FREQUENCY INFRARED SEA SURFACE IMAGES USING A PHASE-CONSISTENCY MODEL

Adaptive Matching of High-Frequency Infrared Sea Surface Images Using a Phase-Consistency Model

Adaptive Matching of High-Frequency Infrared Sea Surface Images Using a Phase-Consistency Model

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The sea surface displays dynamic characteristics, such as waves and various formations.As a result, images of the sea surface usually have few stable feature points, with a background that is often complex and variable.Moreover, the sea surface undergoes significant changes due to variations in wind speed, lighting conditions, weather, and other environmental factors, resulting in considerable discrepancies between images.These variations present challenges for identification using u11-200ps traditional methods.

This paper introduces an algorithm based on the phase-consistency model.We utilize image data collected from a specific maritime area with a high-frame-rate surface array infrared camera.By accurately detecting images with identical names, we focus on the subtle texture information of the sea surface and its rotational invariance, enhancing the accuracy and robustness of the matching algorithm.We begin by constructing a nonlinear scale space using a nonlinear diffusion method.

Maximum and minimum moments are generated using an odd symmetric Log–Gabor filter within the two-dimensional phase-consistency model.Next, we identify extremum points in the anisotropic weighted moment space.We use the phase-consistency feature values as image gradient features and develop feature descriptors based on the Log–Gabor filter that are insensitive to scale and rotation.Finally, we employ Euclidean distance as the similarity measure for initial matching, align the feature read more descriptors, and remove false matches using the fast sample consensus (FSC) algorithm.

Our findings indicate that the proposed algorithm significantly improves upon traditional feature-matching methods in overall efficacy.Specifically, the average number of matching points for long-wave infrared images is 1147, while for mid-wave infrared images, it increases to 8241.Additionally, the root mean square error (RMSE) fluctuations for both image types remain stable, averaging 1.5.

The proposed algorithm also enhances the rotation invariance of image matching, achieving satisfactory results even at significant rotation angles.

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