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Towards On-Device Face Recognition in Body-worn Cameras

机译:朝向设备磨损相机的设备面部识别

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Face recognition technology related to recognizing identities is widely adopted in intelligence gathering, law enforcement, surveillance, and consumer applications. Recently, this technology has been ported to smartphones and body-worn cameras (BWC). Face recognition technology in body-worn cameras is used for surveillance, situational awareness, and keeping the officer safe. Only a handful of academic studies exist in face recognition using the body-worn camera. A recent study has assembled BWCFace facial image dataset acquired using a body-worn camera and evaluated the ResNet-50 model for face identification. However, for real-time inference in resource constraint body-worn cameras and privacy concerns involving facial images, on-device face recognition is required. To this end, this study evaluates lightweight MobileNet-V2, EfficientNet-BO, LightCNN-9 and LightCNN-29 models for face identification using body-worn camera. Experiments are performed on a publicly available BWCface dataset. The real-time inference is evaluated on three mobile devices. The comparative analysis is done with heavy-weight VGG-16 and ResNet-50 models along with six hand-crafted features to evaluate the trade-off between the performance and model size. Experimental results suggest the difference in maximum rank-l accuracy of lightweight LightCNN-29 over best-performing ResNet-50 is 1.85% and the reduction in model parameters is 23.49M. Most of the deep models obtained similar performances at rank-5 and rank-10. The inference time of LightCNNs is 2.1x faster than other models on mobile devices. The least performance difference of 14% is noted between LightCNN-29 and Local Phase Quantization (LPQ) descriptor at rank-l. In most of the experimental settings, lightweight LightCNN models offered the best trade-off between accuracy and the model size in comparison to most of the models.
机译:与识别身份相关的面部识别技术在情报集合,执法,监控和消费者应用中被广泛采用。最近,该技术已移植到智能手机和机身相机(BWC)。身体磨损摄像机的人脸识别技术用于监视,态势意识,并使警察安全。使用身体磨损的相机只有少数学术研究。最近的一项研究组装了使用Body-Work相机获取的BWCFace面部图像数据集,并评估Reset-50模型以进行面部识别。然而,对于资源约束身体磨损的摄像机和涉及面部图像的隐私问题的实时推断,需要在设备上识别。为此,本研究评估了使用Body-Work摄像机的轻量级MobileNet-V2,CefenceNet-Bo,LightCN-9和LightCN-29模型,用于面部识别。实验在公开的BWCFace数据集上进行。在三个移动设备上评估实时推断。比较分析是用重型VGG-16和Reset-50型号进行的,以及六种手工制作的功能,可以评估性能和模型尺寸之间的权衡。实验结果表明,最佳性能Reset-50重量级LightCN-29的最大秩-L准确度的差异为1.85%,模型参数的减少为23.49m。大多数深层模型在秩-5和秩-10处获得了类似的性能。 LightCnns的推理时间比移动设备上的其他模型快2.1倍。在Rank-L的LightCN-29和局部相位量化(LPQ)描述符之间注意到14%的最小性能差异。在大多数实验设置中,轻量级LightCNN模型提供了与大多数型号相比的精度和模型大小之间的最佳权衡。

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