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Energy-efficient face detection and recognition scheme for wireless visual sensor networks

机译:无线视觉传感器网络的节能面检测和识别方案

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Energy-efficient and robust face detection and recognition scheme can be useful for many application fields such as security and surveillance in multimedia and visual sensor network (VSN). VSN consists of wireless resources-constrained nodes that are equipped with low-energy CMOS cameras for monitoring. On the one hand, captured images are meaningful multimedia-data that impose high energy consumption to be processed and transmitted. On the other hand, visual sensor (VS) is a battery-powered node with limited life-time. This situation leads to a trade-off between detection-accuracy and power-consumption. This trade-off is considered as the most major challenge for applications using multimedia data in wireless environments such as VSN. For optimizing this trade-off, a novel face detection and recognition scheme has been proposed in this paper based on VSN. In this scheme, detection phase is performed at VS and recognition phase is accomplished at the base station (sink). The contributions of this paper are in three folds: 1. Fast and energy-aware face-detection algorithm is proposed based on omitting non-human blobs and feature-based face detection in the considered human-blobs. 2. A novel energy-aware and secure algorithm for extracting light-weight discriminative vector of detected face-sequence to be sent to sink with low transmission-cost and high security level. 3. An efficient face recognition algorithm has been performed on the received vectors at the sink. The performance of our proposed scheme has been evaluated in terms of energy-consumption, detection and recognition accuracy. Experimental results, performed on standard datasets (FERET, Yale and CDnet) and on personal datasets, demonstrate the superiority of our scheme over the recent state-of-the-art methods. (C) 2019 Published by Elsevier B.V.
机译:节能稳健的面部检测和识别方案对于许多应用领域有用,例如多媒体和视觉传感器网络(VSN)中的安全性和监视。 VSN由具有用于监控的低能量CMOS摄像机的无线资源约束节点。一方面,捕获的图像是有意义的多媒体数据,它施加高能消耗和传输。另一方面,视觉传感器(VS)是电池供电的节点,寿命有限。这种情况导致检测准确性和功耗之间的权衡。此权衡被视为在VSN等无线环境中使用多媒体数据的应用程序的最大挑战。为了优化该权衡,本文基于VSN提出了一种新颖的面部检测和识别方案。在该方案中,在VS和识别阶段执行检测阶段,在基站(宿区)完成。本文的贡献有三个倍数:1。基于省略了在所考虑的人 - Blob中省略非人斑和特征的面部检测,提出了快速和能量感知的面部检测算法。 2.一种新的能量感知和安全算法,用于提取检测到的面部序列的轻量级鉴别向量,以低传输 - 成本和高安全级别送到下沉。 3.已经在接收的接收器处执行了高效的人脸识别算法。在能耗,检测和识别准确性方面,已经评估了我们拟议方案的表现。在标准数据集(FERET,YOLE和CDNET)和个人数据集上执行的实验结果,证明了我们对最近最先进的方法的方案的优势。 (c)2019年由elestvier b.v发布。

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