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Algorithms for People Recognition in Digital Images: A Systematic Review and Testing

机译:人们在数字图像中识别的算法:系统审查和测试

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People recognition in digital images has wide applications and challenges. In this article, we present a systematic review of works published in the last decade; based on which, we have identified, implemented and tested the frequently used and best-assessed algorithms. We have found Histograms of Oriented Gradients (HOG) like feature extraction algorithm; and two classification algorithms, AdaBoost and Support Vector Machine (SVM). The tests were performed on 50 images chosen randomly from Penn-Fudan public database. The accuracy in SVM-HOG combination was 0.96, it is a similar value to a related work; and the detection rate was 0.66 in SVM-HOG combination and 0.72 in Adaboost-HOG combination, they are inferior to related works. We shall discuss possible reasons.
机译:人们在数字图像中的认可具有广泛的应用和挑战。在本文中,我们在过去十年中发表的作品提供了系统审查;我们已经确定了,实施和测试了经常使用和最佳评估的算法。我们发现了面向梯度(HOG)等特征提取算法的直方图;和两个分类算法,Adaboost和支持向量机(SVM)。从Penn-Fudan公共数据库随机选择的50个图像上进行测试。 SVM-HOG组合的准确性为0.96,它是与相关工作相似的价值;并且在SVM-HOG组合中的检出率为0.66,并且在Adaboost-Hog组合中的0.72中,它们差不等于相关的作品。我们将讨论可能的原因。

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