电表识别OCR及分析平台的设计方案

Zhenlin Huang, Zheng Wang, Zhenyu Chen, Yongwen Gong, Xing Wen, Liuqi Zhao, Ning Wang, Ziyan Feng, Tianyi Qiu
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引用次数: 0

摘要

本文提出了一种新的OCR平台设计方案。该方案首先在标准数据集上对模型进行预训练,提高其基本识别能力,然后利用迁移学习技术对预训练模型进行微调,使其适应自定义场景,从而提高其在电力行业应用中的识别能力。这种方法大大减少了对带注释的数据的需求,并且可以快速适应新的仪表类型和更新。此外,智能数据采集、处理和分析平台可以有效地帮助电力公司对设备和仪表进行监控、测量、诊断和预测,从而提高企业的安全性和稳定性。通过引入迁移学习相关技术,将模型在标准数据集上学习到的知识转移到定制场景中,提高模型在电力行业特定应用中的识别能力,实现对电力设备异常情况的快速预警和诊断,进一步提高企业的生产效率和安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Design Scheme of OCR and Analysis Platform for Power Meter Identification
This paper proposes a new design scheme for an OCR platform. The scheme first pre-trains the model on a standard dataset to improve its basic recognition ability, and then fine-tunes the pre-trained model using transfer learning techniques to a custom scenario, thus improving its recognition ability in power industry applications. This approach greatly reduces the need for annotated data and can quickly adapt to new meter types and updates. Additionally, an intelligent data collection, processing, and analysis platform can effectively help power companies monitor, measure, diagnose, and predict equipment and meters, thereby enhancing enterprise safety and stability. By introducing transfer learning-related techniques, the model’s knowledge learned on a standard dataset is transferred to a custom scenario, improving its recognition ability in power industry-specific applications and achieving rapid warning and diagnosis of abnormal situations in power equipment, further improving production efficiency and safety of the enterprise.
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