Performance analysis of pre-processing filters for underwater images

K. Srividhya, M. Ramya
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引用次数: 8

Abstract

In oceanic environment, uneven illumination, turbulence in water and floating particles make underwater image capture, a challenge. Vision sensors attached with the autonomous underwater vehicles, themselves cause light dispersion and shadows in the ocean floor. Although, several computer vision algorithms have been developed, effective analysis of the algorithms both quantitatively and qualitatively have not been done. This paper analyses the existing methods for the inherent problems and provides a framework for underwater image processing. Initially, for non-uniform illumination correction, homomorphic, anisotropic and bilateral filtering techniques are compared for contrast equalization. Contrast enhancement is done using contrast limited adaptive histogram equalization (CLAHE) with adaptive histogram clip. Finally, Haar wavelet and Symlet are compared for adaptive smoothing, elimination of remaining noise and for improving edge detection. Performance is assessed by computing peak signal noise ratio (PSNR), contrast to noise ratio (CNR), image enhancement metric (IEM), and absolute mean brightness error (AMBE). Histograms are computed before and after applying pre-processing filters, for evaluating the proposed methodology. A combination of homomorphic filtering, CLAHE and haar wavelet denoising provides better results over other methods for underwater images.
水下图像预处理滤波器的性能分析
在海洋环境中,光照不均匀、水中湍流和漂浮粒子等因素对水下图像的捕捉构成了挑战。附着在自动水下航行器上的视觉传感器本身会在海底产生光散射和阴影。尽管已经开发了几种计算机视觉算法,但尚未对这些算法进行定量和定性的有效分析。分析了现有的水下图像处理方法存在的问题,为水下图像处理提供了一个框架。首先,对于非均匀照明校正,比较了同态、各向异性和双边滤波技术的对比度均衡。对比度增强使用对比度限制自适应直方图均衡化(CLAHE)和自适应直方图剪辑。最后,比较了Haar小波和Symlet在自适应平滑、消除残余噪声和改进边缘检测方面的性能。通过计算峰值信噪比(PSNR)、噪声对比比(CNR)、图像增强度量(IEM)和绝对平均亮度误差(AMBE)来评估性能。在应用预处理滤波器之前和之后计算直方图,以评估所提出的方法。将同态滤波、CLAHE和haar小波去噪相结合,对水下图像的去噪效果优于其他方法。
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