基于卷积神经网络的汉字编码标记点检测识别
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TP39141

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国家自然科学基金(51575276)项目资助


Detection and recognition of Chinese character coded marks based on convolutional neural network
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    摘要:

    近景摄影测量中采用的标记点要求具有唯一身份号并能在图像中被精确识别定位。设计了一种以汉字作为编码特征的编码标记点,提出了一种基于卷积神经网络的编码标记点检测识别方法。首先采用基于相机成像原理的虚拟相机法,自动生成大量汉字编码点模拟图像作为训练样本,并据此训练卷积神经网络成为汉字编码点识别网络。根据一系列编码点筛选准则分割得到实拍汉字编码点,然后用编码点识别网络对其身份号进行识别,最后通过中心定位算法定位编码点中心。实验结果表明构建的识别网络对汉字编码点识别率可达9767%,且受噪声、投影角度、图像对比度、亮度等因素的影响小;分割算法鲁棒性强,能准确分割出汉字编码点;中心定位算法对编码点中心的定位精度高。

    Abstract:

    In closerange photogrammetry, it is required that the adopted coded marks must have unique identification number and can be identified as well as located accurately in the image. In this paper, a kind of coded marks with Chinese character as encoding characteristic is designed, and a detection recognition method for the coded marks is proposed based on convolutional neural network. Firstly, a virtual camera method based on the camera imaging principle is used to automatically generate large amount of simulative images of the designed Chinese character coded marks, which are used as training samples. These samples are used to train the convolutional neural network that is used as the recognition network of Chinese character coded marks. The real captured Chinese character coded marks in the measurement images are detected with a series of cede mark sifting criteria, and the identification number is identified with the coded mark recognition network. Finally, the ceded mark centers are located with the center location algorithm. The experiment results show that the proposed recognition network has strong ability for recognizing the Chinese character coded marks, the recognition rate reaches 9767%. The proposed method is less affected by noise, projection angle, image contrast and brightness changes, and possesses strong robustness. The proposed method can accurately segment the Chinese character coded marks and the center location algorithm can accurately locate the mark centers.

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陶聪,施云,张丽艳.基于卷积神经网络的汉字编码标记点检测识别[J].仪器仪表学报,2019,40(8):191-200

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  • 在线发布日期: 2022-02-22
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