Automatic meter reading technology is not yet widespread. Gas, electricity, or water accumulation meters reading is mostly done manually on-site either by an operator or by the homeowner. In some countries, the operator takes a picture as reading proof to confirm the reading by checking offline with another operator and/or using it as evidence in case of conflicts or complaints. The whole process is time-consuming, expensive, and prone to errors. Automation can optimize and facilitate such labor-intensive and human error-prone processes. With the recent advances in the fields of artificial intelligence and computer vision, automatic meter reading systems are becoming more viable than ever. Motivated by the recent advances in the field of artificial intelligence and inspired by open-source open-access initiatives in the research community, we introduce a novel large benchmark dataset of real-life gas meter images, named the NRC-GAMMA dataset. The data were collected from an Itron 400A diaphragm gas meter on January 20, 2020, between 00:05 am and 11:59 pm. We employed a systematic approach to label the images, validate the labellings, and assure the quality of the annotations. The dataset contains 28,883 images of the entire gas meter along with 57,766 cropped images of the left and the right dial displays. We hope the NRC-GAMMA dataset helps the research community to design and implement accurate, innovative, intelligent, and reproducible automatic gas meter reading solutions.
翻译:自动化读取技术尚未普及。煤气、电或蓄水量计的读取大多是由操作者或房主手工在现场手工完成的。在某些国家,操作者将照片作为阅读证明,与另一个操作者进行离线检查,并/或在发生冲突或投诉时将它用作证据。整个过程耗时、昂贵且容易出错。自动化可以优化并促进这种劳动密集型和人为易出错的过程。随着人工智能和计算机视觉领域的最新进展,自动计量读取系统比以往任何时候更加可行。受人造情报领域最近进展的启发,并受研究界开放源开放访问倡议的启发,我们推出了一套新型的关于实时气体计量图像的基准数据集,称为NRC-GAMMA数据集。这些数据是2020年1月20日Itron 400A隔膜气体测量仪收集的,在2020年1月00:05分至11:59分之间,自动计量读取系统化仪系统对图像进行标签,验证标签,确保N-源公开访问领域准确的读取质量。我们采用了57MMA的自动图像,并用57MA数据库和图像进行。