使用YOLOv5s从智能文档图像中识别多目标

Bipin Nair B J, Unni Govind S, M. Jose
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引用次数: 0

摘要

多种身份证明的多对象识别将为数据提供更多的安全性和认证。通常,不同的ID证明以不同的方式展示对象,因此手动识别常见对象是一个耗时的过程。现有的一些工作,如YOLOv3、YOLOv5、CNN和Faster RCNN,都集中在同一数据集类别的单个目标检测上,而建议的工作则集中在使用YOLOv5模型的异构数据集上。提出的工作将自动检测和识别来自各种政府身份证明的多目标,以及克服重叠的目标识别。该模型包括深度YOLOv5,包含19个卷积层和5个池化层。该模型从1000个人工收集的各种政府身份证明(如驾驶执照、PAN卡、Aadhaar卡和选民身份证)中检测对象。该模型用750个数据集进行训练,用250个数据集进行测试,最后用50个数据集进行验证。该模型能够清晰地检测和识别姓名、唯一识别码、出生日期和照片,准确率为94.6%。此外,该模型对重叠签名的识别精度更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple Object Recognition from Smart Document Images using YOLOv5s
Multiple object recognition from various ID proofs will give more security as well as authentication of the data. In general, various ID proofs showcase objects in various ways, so manually identifying common objects is a time-consuming process. Some of the existing work like YOLOv3, YOLOv5, CNN, and Faster RCNN, all concentrate on one single object detection from the same dataset category, while the proposed work concentrates on heterogeneous datasets with the YOLOv5s model. The proposed work will automate the multiple object detection and recognition from various government id proofs as well as overcoming overlapped object recognition. The proposed model includes deep YOLOv5, which contains 19 convolution layers and 5 pooling layers. The proposed model detects the object from 1000 manually collected various government ID proofs like driving licence, PAN card, Aadhaar card, and voters' ID. The model is trained with 750 datasets and tested with 250 datasets, and finally validated with 50 datasets. The model clearly detects and recognize the name, unique identification number, date of birth, and photograph with 94.6% accuracy. Also, the model recognizes overlapping signatures with better accuracy.
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