Abstract

Panoramic stitching technology provides an effective solution for expanding visual detection range of the autonomous underwater vehicle. However, absorption and scattering of light in the water seriously deteriorate the underwater imaging in terms of distance and quality, especially the scattering sharply decreases the underwater image contrast and results in serious blur. This reduces the number of matching feature points between the underwater images to be stitched, while fewer matched points generated make image registration and stitching difficult. To solve the problem, a joint framework is established, which firstly involves a convolutional neural network-like algorithm composed of a symmetric convolution and deconvolution framework for underwater image enhancement. Then, it proposes an improved convolutional neural network-random sample consensus method based on VGGNet-16 framework to generate more correct matching feature points for image registration. The fusion method based on Laplacian pyramid is applied to eliminate artificial stitching traces and correct the position of stitching seam. Experimental results indicate that the proposed framework can restore the color and detail information of underwater images and generate more effective and sufficient matching feature points for underwater sequence images stitching.

Highlights

  • The marine resources development and underwater exploration have become an important development strategy for all countries

  • In order to verify the effect of the enhancement method in real underwater images, real underwater images with different fuzzy degradation types and scenes are selected for processing, and the frequently-used methods are selected for comparison, including Histogram Equalization (HE), Contrast Limited Adaptive Histogram Equalization (CLAHE), Multi-Scale Retinex with Color Restore (MSRCR), Dark Channel Prior (DCP), Image Fusion Enhancement (IFE), and Wavelength Compensation and Image Defogging (WCID)

  • The result of different underwater image enhancement methods is presented in Figure 6, the first two images are typical underwater color attenuation images, and the third image is submarine images taken by AUV, and the fourth image is tunnel wall images captured by AUV for underwater tunnel detection

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Summary

Introduction

The marine resources development and underwater exploration have become an important development strategy for all countries. Underwater detection operation can be implemented for decoupling operation and long-term and large-scale autonomous underwater navigation, detection, and collision avoidance, which has the advantages of high efficiency, strong controllability, safety, and intelligence.[2,3,4,5] When underwater exploration is carried out with autonomous. Underwater vehicle (AUV) well environmental perception is the prerequisite for underwater exploration.[6,7] AUV has full application for the fields such as drawing of seabed topography,[8] detection of submarine pipelines,[9] exploration of seabed mineral resources,[10] and visual navigation of underwater vehicle.[11]

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