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Research on Location of Chinese Handwritten Signature Based on EfficientDet

机译:基于高效仪的中国手写签名位置研究

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Nowadays, most of the time we need to obtain the location information of the signature in the documents for signature verification or other tasks. Manual processing can be completed for a small amount of documents, if the amount of documents is large, it will consume huge manpower and material resources to do it .When using deep learning methods to intelligently locate signatures, but there are several difficulties: First, for documents such as Chinese contracts, files, etc. the signature is covered by seal coverage or other interference in most cases, which brings a lot of interference to the location of the signature.Second , it is hard to get real-scene contracts, bills which can be used as training sets.Third, the signature itself has fewer features, this brings certain difficulties to the intelligent location. This paper proposes an improved feature extraction network based on EfficientNet to adapt to detection targets with fewer features and more interference. Training datasets mainly comes from algorithm synthesis.Finally we tested on 1000 scanned documents containing 2048 handwritten signatures,the test results on real-scenes data set containing Chinese handwritten signatures can achieve more than 90% of AP, Precision, and Recall.
机译:如今,我们的大部分时间都需要在文档中获取签名的位置信息以进行签名验证或其他任务。手动处理可以完成少量文档,如果文件的数量很大,它将消耗巨大的人力和物质资源。当使用深度学习方法智能地定位签名时,但有几个困难:首先,对于诸如中国合同,文件等等文件。在大多数情况下,签名是由密封覆盖范围或其他干扰的签名,这为签名的位置带来了很多干扰。第二,可以用作培训集的账单。第三,签名本身具有较少的功能,这给智能位置带来了某些困难。本文提出了一种基于有效网络的改进的特征提取网络,以适应具有较少特征和更多干扰的检测目标。训练数据集主要来自算法综合。我们在1000个包含2048个手写签名的扫描文档上测试了,测试结果在包含汉语手写签名的实际场景数据集上可以实现超过90%的AP,精度和召回。

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