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Deep Learning Techniques Applied to the Cattle Brand Recognition

机译:深度学习技术应用于牛的品牌识别

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The automatic recognition of cattle brandings is a need of the government organizations responsible for controlling this activity. To help this process, this work presents a method that consists in using Deep Learning techniques for extracting features from images of cattle branding and Support Vector Machines for their classification. This method consists of six stages: (a) selection of a database of images; (b) selection of a pre-trained CNN; (c) pre-processing of the images, and application of the CNN; (d) extraction of features from the images; (e) training and classification of images (SVM); (f) evaluation of the results obtained in the classification phase. The accuracy of the method was tested on the database of a City Hall, where it achieved satisfactory results, comparable to other methods reported in the literature, with 91.94% of Overall Accuracy, and a processing time of 26.766 s, respectively.
机译:牛商标的自动识别是负责控制此活动的政府组织的需要。为了帮助这一过程,该工作提出了一种方法,该方法包括使用深度学习技术从牛商标和支持向量机的图像中提取特征以对其进行分类。该方法包括六个阶段:(a)选择图像数据库; (b)选择经过预训练的CNN; (c)图像的预处理和CNN的应用; (d)从图像中提取特征; (e)图像的训练和分类(SVM); (f)评估在分类阶段获得的结果。该方法的准确性在市政厅的数据库中进行了测试,与文献中报道的其他方法相比,该方法取得了令人满意的结果,总体准确性为91.94%,处理时间为26.766 s。

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