论文标题

在不受约束的情况下倾向于基于图像的自动读数:一种强大而有效的方法

Towards Image-based Automatic Meter Reading in Unconstrained Scenarios: A Robust and Efficient Approach

论文作者

Laroca, Rayson, Araujo, Alessandra B., Zanlorensi, Luiz A., de Almeida, Eduardo C., Menotti, David

论文摘要

现有的基于图像的自动读数(AMR)的方法已在控制良好的方案中捕获的图像上进行了评估。但是,现实世界中的读取呈现出不受约束的场景,由于污垢,各种照明条件,比例尺变化,面板内和平面外旋转以及其他因素以及其他因素,这些情况更具挑战性。在这项工作中,我们提出了一种端到端的方法,用于专注于不受约束的场景。我们的主要贡献是在AMR管道中插入一个新阶段,称为角检测和计数分类,这使得计数器区域在识别阶段之前可以纠正 - 拒绝难以辨认的/有缺陷的仪表。我们还引入了一个名为Copel-AMR的公开数据集,该数据集包含由服务公司员工本身在现场获得的12,500米图像,其中包括2500张有缺陷的仪表或由于遮挡导致阅读难以辨认的情况。实验评估表明,所提出的系统具有三个以级联模式运行的网络,在识别率方面优于所有基准,同时仍然非常有效。此外,由于在现实世界应用中很少能够容忍阅读错误,因此我们表明,当拒绝较低的置信度值所做的读取时,我们的AMR系统会达到令人印象深刻的识别率(即> 99%)。

Existing approaches for image-based Automatic Meter Reading (AMR) have been evaluated on images captured in well-controlled scenarios. However, real-world meter reading presents unconstrained scenarios that are way more challenging due to dirt, various lighting conditions, scale variations, in-plane and out-of-plane rotations, among other factors. In this work, we present an end-to-end approach for AMR focusing on unconstrained scenarios. Our main contribution is the insertion of a new stage in the AMR pipeline, called corner detection and counter classification, which enables the counter region to be rectified -- as well as the rejection of illegible/faulty meters -- prior to the recognition stage. We also introduce a publicly available dataset, called Copel-AMR, that contains 12,500 meter images acquired in the field by the service company's employees themselves, including 2,500 images of faulty meters or cases where the reading is illegible due to occlusions. Experimental evaluation demonstrates that the proposed system, which has three networks operating in a cascaded mode, outperforms all baselines in terms of recognition rate while still being quite efficient. Moreover, as very few reading errors are tolerated in real-world applications, we show that our AMR system achieves impressive recognition rates (i.e., > 99%) when rejecting readings made with lower confidence values.

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