Tianjin Key Laboratory for Control Theory & Applications in Complicated Systems, School of Electrical and Electronic Engineering, Tianjin University of Technology, Tianjin 300384, China.
Sensors (Basel). 2019 Jan 16;19(2):343. doi: 10.3390/s19020343.
For some measurement and detection applications based on video (sequence images), if the exposure time of camera is not suitable with the motion speed of the photographed target, fuzzy edges will be produced in the image, and some poor lighting condition will aggravate this edge blur phenomena. Especially, the existence of noise in industrial field environment makes the extraction of fuzzy edges become a more difficult problem when analyzing the posture of a high-speed moving target. Because noise and edge are always both the kind of high-frequency information, it is difficult to make trade-offs only by frequency bands. In this paper, a noise-tolerant edge detection method based on the correlation relationship between layers of wavelet transform coefficients is proposed. The goal of the paper is not to recover a clean image from a noisy observation, but to make a trade-off judgment for noise and edge signal directly according to the characteristics of wavelet transform coefficients, to realize the extraction of edge information from a noisy image directly. According to the wavelet coefficients tree and the Lipschitz exponent property of noise, the idea of neural network activation function is adopted to design the activation judgment method of wavelet coefficients. Then the significant wavelet coefficients can be retained. At the same time, the non-significant coefficients were removed according to the method of judgment of isolated coefficients. On the other hand, based on the design of Daubechies orthogonal compactly-supported wavelet filter, rational coefficients wavelet filters can be designed by increasing free variables. By reducing the vanishing moments of wavelet filters, more high-frequency information can be retained in the wavelet transform fields, which is benefit to the application of edge detection. For a noisy image of high-speed moving targets with fuzzy edges, by using the length 8-4 rational coefficients biorthogonal wavelet filters and the algorithm proposed in this paper, edge information could be detected clearly. Results of multiple groups of comparative experiments have shown that the edge detection effect of the proposed algorithm in this paper has the obvious superiority.
对于某些基于视频(序列图像)的测量和检测应用,如果相机的曝光时间与拍摄目标的运动速度不匹配,图像中会出现模糊的边缘,而某些较差的照明条件会加剧这种边缘模糊现象。特别是在工业现场环境中存在噪声的情况下,分析高速运动目标的姿态时,模糊边缘的提取变得更加困难。因为噪声和边缘总是具有高频信息,仅通过频带很难进行权衡。本文提出了一种基于小波变换系数层间相关关系的抗噪边缘检测方法。本文的目的不是从噪声观测中恢复干净的图像,而是根据小波变换系数的特点直接对噪声和边缘信号进行权衡判断,直接从噪声图像中提取边缘信息。根据小波系数树和噪声的 Lipschitz 指数特性,采用神经网络激活函数的思想设计小波系数的激活判断方法。然后可以保留显著的小波系数。同时,根据孤立系数的判断方法去除非显著系数。另一方面,基于 Daubechies 正交紧支撑小波滤波器的设计,可以通过增加自由变量来设计合理系数的小波滤波器。通过减少小波滤波器的消失矩,可以在小波变换域中保留更多的高频信息,这有利于边缘检测的应用。对于具有模糊边缘的高速运动目标的噪声图像,通过使用长度为 8-4 的有理系数双正交小波滤波器和本文提出的算法,可以清晰地检测到边缘信息。多组对比实验的结果表明,本文提出的算法的边缘检测效果具有明显的优势。