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Heterogeneous Feature Fusion-based Optimal Face Image Acquisition in Visual Sensor Network

机译:基于异构特征的基于功能融合的视觉传感器网络中的最佳面部图像采集

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High quality face image acquisition from huge video data obtained in visual sensor network is of great significance in applications related to face processing, such as face recognition and reconstruction. This paper proposes an optimal face image acquisition method in visual sensor network, which is based on collaborative face frames acquisition and heterogeneous feature fusion-based face quality assessment. Gaussian-probability-distribution-based multi-view data fusion and kalman filter are used for collaborative target localization and tracking. To achieve primary screening of face frames, a lightweight face frames quality evaluation method is presented. Importantly, new face quality assessment criterion calculation methods are proposed to make fine screening of face images more applicable in visual sensor network. The new face quality assessment criterion calculation methods are based on heterogeneous feature fusion of pedestrian tracking and static face image features analysis. Fuzzy inference engine is used to combine these criteria to generate a face quality assessment score. Experimental results show that the proposed method can acquire optimal face images accurately and robustly.
机译:从视觉传感器网络中获得的巨大视频数据获取高质量的面部图像获取在与面部处理相关的应用中具有重要意义,例如面部识别和重建。本文提出了一种在视觉传感器网络中的最佳面部图像采集方法,其基于协同面帧获取和基于异构特征融合的面部质量评估。高斯概率分布的多视图数据融合和卡尔曼滤波器用于协作目标本地化和跟踪。为了实现面部框架的初级筛选,提出了一种轻质面帧质量评估方法。重要的是,提出了新的面部质量评估标准计算方法,以便在视觉传感器网络中更适用的脸部图像进行细微筛选。新的面部质量评估标准计算方法基于行人跟踪和静态图像特征分析的异构特征融合。模糊推理引擎用于将这些标准组合以产生面部质量评估分数。实验结果表明,该方法可以准确且鲁棒地获得最佳面部图像。

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