史丽晨

教授    博士生导师    硕士生导师

个人信息 更多+
  • 教师英文名称: Lichen Shi
  • 教师拼音名称: shilichen
  • 所在单位: 机电工程学院
  • 学历: 博士研究生
  • 办公地点: 草堂校区机电楼
  • 性别: 女
  • 学位: 博士学位
  • 在职信息: 在职

其他联系方式

通讯/办公地址:

邮箱:

论文成果

当前位置: 中文主页 - 科学研究 - 论文成果

A pointer meter reading method based on human-like reading sequence and keypoint detection

发布时间:2025-02-14
点击次数:
DOI码:
10.1016/j.measurement.2025.116994
发表刊物:
Measurement
关键字:
Pointer meter,Deep learning,DeeplabV3Plus,Attention mechanism,Keypoint
摘要:
To aid in the development of unmanned factories and increase industrial production efficiency, meter recognition reading methods based on machine vision are replacing manual meter reading. This paper proposes a recognition and reading method for pointer-type meters based on the lightweight networks YOLOv8S and MC-DeeplabV3Plus, with the goal of addressing existing methods’ poor robustness and low reading accuracy on edge devices. It applies to pointer-type meters with uniformly distributed scales. The proposed Channel Depth-wise Convolutional Attention (CDCA) module improves the channel attention module’s accuracy in segmenting details and edge features. It is integrated into the DeeplabV3Plus network alongside the Mixed Local Channel Attention (MLCA) module, thereby improving the model’s segmentation performance in complex scenarios. At the same time, MobileNetV2 is selected as the segmentation network’s backbone due to its lightweight structure, which makes it suitable for deployment on devices with limited resources. To enhance the stability of meter readings, this paper uses a flexible angular approach to calculate the readings. This method acquires the meter’s key points by mimicking the human reading sequence and maintains good robustness even when partial information is missing. The experimental results demonstrate that this method achieves a fiducial error of approxi- mately 0.039 % in an interference-free laboratory environment and 0.733 % in real-world scenarios, and that the average frame rate for single image processing without GPU support is 3.61 FPS with only 14.18 million parameters, indicating a high application potential.
第一作者:
刘琦
论文类型:
期刊论文
通讯作者:
史丽晨
学科门类:
工学
文献类型:
J
是否译文:
发表时间:
2025-01-01
收录刊物:
SCI
发布期刊链接:
https://doi.org/10.1016/j.measurement.2025.116994