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GAS meter reading from real world images using a multi-net system

机译:使用多网系统从真实图像中读取气体的仪表

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摘要

We present a new approach for automatic gas meter reading from real world images. The gas meter reading is usually done on site by an operator and a picture is taken from a mobile device as proof of reading. Since the reading operation is prone to errors, the proof image is checked offline by another operator to confirm the reading. In this study, we present a method to support the validation process in order to reduce the human effort. Our approach is trained to detect and recognize the text of a particular area of interest. Firstly we detect the region of interest and segment the text contained using a method based on an ensemble of neural models. Then we perform an optical character recognition using a Support Vector Machine. We evaluated every step of our approach, as well as the overall assessment, showing that despite the complexity of the problem our method provide good results also when applied to degraded images and can therefore be used in real applications.
机译:我们提出了一种从实际图像中自动读取燃气表的新方法。煤气表的读取通常由操作员在现场完成,并从移动设备上拍摄照片作为读取证明。由于读取操作容易出错,因此另一位操作员会离线检查证明图像以确认读取。在这项研究中,我们提出一种方法来支持验证过程,以减少人工。我们的方法经过培训,可以检测和识别特定兴趣区域的文本。首先,我们检测感兴趣的区域,并使用基于神经模型集成的方法对包含的文本进行分割。然后,我们使用支持向量机执行光学字符识别。我们评估了方法的每一步以及整体评估,结果表明,尽管问题很复杂,但在将方法应用于降级图像时,我们的方法也能提供良好的结果,因此可以在实际应用中使用。

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