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Correction of Systematic Error in Sub-pixel Edge Location

机译:校正子像素边缘位置系统误差的校正

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In order to improve the accuracy and resolution in edge location, the systematic error in Canny’s sub-pixel edge detector is studied, as well as a method to compensate it is presented in this paper. The digital edge is derived from an ideal step edge through imaging and sampling. Because the high frequency part exceeding the cut off frequency of normal optical systems is not zero, for a given image sensor such as a CCD, there will be some certain aliasing from the insufficient sampling, which results in the systematic error in sub-pixel edge location. This error is periodic in each pixel and is affected by the aberration of optical system and noise. A compensation method is presented based on Multilayer-Perceptron Artificial Neural Network (MLP-ANN). The training data set is constructed by moving and tilting a straight edge randomly, the output of MLP-ANN is the compensation for the systematic error. It is shown that in high signal noise ratio images, systematic errors are main sources of edge location error. The standard deviation of location error for a straight edge was 0.019 pixels in our setup, and after compensation, the standard deviation decreased to 0.010 pixels, this can meet the requirement for most practical engineering measurements.
机译:为了提高边缘位置的准确性和分辨率,研究了Canny的子像素边缘检测器中的系统误差,以及补偿其的方法。数字边缘通过成像和采样来源于理想的台阶边缘。由于高频部分超过正常光学系统的截止频率而不是为零,因为对于诸如CCD的给定图像传感器,所以对于诸如CCD的给定图像传感器,因此存在一些来自的采样不足的别名,这导致子像素边缘中的系统误差地点。每个像素的周期性是周期性的,并且受光学系统和噪声的像差的影响。基于多层 - 感知人工神经网络(MLP-ANN)来提出补偿方法。通过随机移动和倾斜直边来构造训练数据集,MLP-ANN的输出是系统误差的补偿。结果表明,在高信号噪声比图像中,系统误差是边缘位置误差的主要源。在我们的设置中,直边的位置误差的标准偏差为0.019像素,并且补偿后,标准偏差降至0.010像素,这可以满足大多数实际工程测量的要求。

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