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Autonomous robot navigation using Retinex algorithm for multiscale image adaptability in low-light environment

机译:使用RETINEX算法在低光环境中使用RETINEX算法的自主机器人导航

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摘要

This paper proposes an improved Retinex theory based on a weighted guided filter method to enhance images in low-light conditions. The captured images under low illumination can cause dimness, distortion or details loss. We use the weighted guided filter method to perform illumination estimation and the original image is regarded as the guidance image, which can avoid color distortion and over-enhancement. It can adjust the regularization parameter adaptively based on the image content. Perceptual contrast is improved by using an illumination enhancement method with dynamic adjustment. To test the validness of our algorithm, the weighted guided filter method proposed in this paper is compared with bilateral filter and the guided filter method. Finally, experiment under low illumination is implemented on a NAO robot by using the proposed weighted guided filter method based on EKF-SLAM. The experiment result demonstrates that the proposed weighted guided filter method is feasible and effective in low-light environment.
机译:本文提出了一种基于加权引导滤波器方法改进的Retinex理论,以增强低光条件的图像。低照明下的捕获图像会导致暗淡,失真或细节丢失。我们使用加权引导滤波器方法来执行照明估计,并且原始图像被视为引导图像,这可以避免颜色失真和过度增强。它可以基于图像内容自适应地调整正则化参数。通过使用具有动态调整的照明增强方法,改善了感知对比度。为了测试算法的有效性,将本文提出的加权引导滤波器方法与双侧滤波器和引导滤波法进行比较。最后,通过使用基于EKF-SLAM的提出的加权引导滤波方法,在NAO机器人下在NAO机器人下实施实验。实验结果表明,所提出的加权引导滤波器方法在低光环境中是可行和有效的。

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