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首页> 外文期刊>IEEE signal processing letters >Forensic Face Photo-Sketch Recognition Using a Deep Learning-Based Architecture
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Forensic Face Photo-Sketch Recognition Using a Deep Learning-Based Architecture

机译:使用基于深度学习的架构的法医面部照片素描识别

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摘要

Numerous methods that automatically identify subjects depicted in sketches as described by eyewitnesses have been implemented, but their performance often degrades when using real-world forensic sketches and extended galleries that mimic law enforcement mug-shot galleries. Moreover, little work has been done to apply deep learning for face photo-sketch recognition despite its success in numerous application domains including traditional face recognition. This is primarily due to the limited number of sketch images available, which are insufficient to robustly train large networks. This letter aims to tackle these issues with the following contributions: 1) a state-of-the-art model pre-trained for face photo recognition is tuned for face photo-sketch recognition by applying transfer learning, 2) a three-dimensional morphable model is used to synthesise new images and artificially expand the training data, allowing the network to prevent over-fitting and learn better features, 3) multiple synthetic sketches are also used in the testing stage to improve performance, and 4) fusion of the proposed method with a state-of-the-art algorithm is shown to further boost performance. An extensive evaluation of several popular and state-of-the-art algorithms is also performed using publicly available datasets, thereby serving as a benchmark for future algorithms. Compared to a leading method, the proposed framework is shown to reduce the error rate by 80.7% for viewed sketches and lowers the mean retrieval rank by 32.5% for real-world forensic sketches.
机译:已经实现了许多自动识别目击者描述的草图中描绘的主题的方法,但是当使用真实世界的法医草图和模仿执法人员抢劫画廊的扩展画廊时,其性能通常会下降。而且,尽管深度学习在包括传统人脸识别在内的许多应用领域中都取得了成功,但将深度学习应用于人脸照片素描识别的工作还很少。这主要是由于可用的素描图像数量有限,不足以健壮地训练大型网络。这封信旨在通过以下贡献来解决这些问题:1)通过应用转移学习为人脸照片识别预先训练的最先进模型进行调整,以进行人脸照片素描识别; 2)三维可变形该模型用于合成新图像并人为地扩展训练数据,从而使网络能够防止过度拟合并学习更好的功能; 3)在测试阶段还使用了多个合成草图以提高性能; 4)融合所提出的带有最新算法的方法被证明可以进一步提高性能。还使用公开可用的数据集对几种流行和最新技术的算法进行了广泛的评估,从而成为未来算法的基准。与领先的方法相比,所提出的框架显示出已查看草图的错误率降低了80.7%,而真实鉴识草图的平均检索级别降低了32.5%。

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