基于鲁棒长度估计的车牌图像去模糊新技术

P. S. Rao, R. Muthu
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引用次数: 3

摘要

在必须识别肇事车辆的情况下,在看到监控摄像头快照的同时清楚地识别车牌通常很重要。在现实世界的许多情况下,由于车辆的快速运动,这些图像是模糊的,人眼无法识别。对于这种模糊,所涉及的核可以说是一个由其角度和长度描述的线性一致卷积。本文提出了一种新的去模糊技术,以尽可能准确地参数化估计核,重点是长度估计过程。在核角估计中采用了霍夫变换的方法。为了准确估计核长度,提出了一种利用倒谱变换的新方法。我们将使用我们的方案获得的去模糊结果与最近引入的其他盲去模糊技术的结果进行了比较。对比结果表明,我们的方案可以去除相机捕获的图像中的大量模糊,从而恢复车牌的重要语义信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new de-blurring technique for license plate images with robust length estimation
Recognizing a license plate clearly while seeing a surveillance camera snapshot is often important in cases where the troublemaker vehicle(s) have to be identified. In many real world situations, these images are blurred due to fast motion of the vehicle and cannot be recognized by the human eye. For this kind of blurring, the kernel involved can be said to be a linear uniform convolution described by its angle and length. We propose a new de-blurring technique in this paper to parametrically estimate the kernel as accurately as possible with emphasis on the length estimation process. We use a technique which employs Hough transform in estimating the kernel angle. To accurately estimate the kernel length, a novel approach using the cepstral transform is introduced. We compare the de-blurred results obtained using our scheme with those of other recently introduced blind de-blurring techniques. The comparisons corroborate that our scheme can remove a large blur from the image captured by the camera to recover vital semantic information about the license plate.
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