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Towards Automatic Detection of Monkey Faces

机译:朝着自动检测猴面

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An automated monkey face detection system confers distinct advantages in the protection of wild monkeys, sociological studies, monkey feeding and management and so on. The monkey face and human face have similar structures, but still hold some very important differences in appearance. Therefore, whether the mainstream human face detection algorithms can be adapted to the detection of monkey face is still unknown. To investigate this problem, we collected a database of monkey face (with more than 20,000 macaque faces) and conducted several experiments in our database. Experimental results reveal some interesting results. Firstly, the classical Viola-Jones Adaboost algorithm on monkey faces does not work as well as that on human faces. A in-depth study for this result will be given by taking insight into the selected features by Adaboost. In particular, lips and eyebrows are very important to human face recognition. However, the lack of these prominent features in the monkey's face causes the Viola-Jones algorithm to choose more local Haar-like features, resulting in a higher false positive rate. Secondly, the Faster R-CNN works effectively for monkey face detection but requires a large number of training samples. A pre-training with human faces helps to tackle the problem of shortage of monkey faces for training. Above conclusion indicate that an automatic monkey face detector can be learnt from a human face detector, yet a model with complex features should be employed.
机译:自动猴子脸部检测系统赋予保护野生猴子,社会学研究,猴子喂养和管理等鲜明优势。猴子面和人脸具有相似的结构,但仍然存在一些非常重要的外观差异。因此,主流人脸检测算法是否可以适应猴面的检测仍然未知。为了调查这个问题,我们收集了一个猴子面部的数据库(有超过20,000个猕猴),并在我们的数据库中进行了几个实验。实验结果揭示了一些有趣的结果。首先,猴子脸上的古典中提琴jones adaboost算法不起作用以及人类面的工作。通过熟悉Adaboost洞察所选功能,将对此结果进行深入研究。特别是,嘴唇和眉毛对人类的脸部识别非常重要。然而,猴子脸上缺乏这些突出的特征导致中提琴算法选择更多本地哈拉的特征,从而导致更高的误率。其次,R-CNN更快地为猴子脸部检测有效地工作,但需要大量的训练样本。与人类面孔进行预训练有助于解决猴子面临训练的短缺问题。上面的结论表明,可以从人脸检测器中学到自动猴子面检测器,但应该采用复杂特征的模型。

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