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SmartPartNet: Part-Informed Person Detection for Body-Worn Smartphones

机译:SmartPartNet:身体磨损智能手机的部分知情人员检测

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We are interested in the development of image-based person detection algorithms for wearable computing using commodity smartphones. We focus on the use of smartphones as a wearable device because it is a practical means of augmenting human sensing for applications such as navigation for the blind or assisting social interaction. We identify two unique features of developing a vision-based person detector for body-worn smartphones: (1) the detector must take into account the strong bias in the size of people in the images taken with a wearable device and (2) the detector must consider the low image quality due to dim lighting and rapid ego-motion which leads to motion blur. In order to account for the unique distribution over the visibility of body parts when using a wearable camera, we propose a part-based person detector specialized for chestmounted smartphones. We perform extensive ablative analysis on the usefulness of part information, providing several insights regarding the design of the optimal person detector across different application domains. To account for the frequent occurrence of motion blur in our target domain, we introduce a data augmentation technique to generate synthetic motion-blurred images during training. In addition to addressing the aforementioned features, the final detector must also run in real-time using only smartphone resources. We leverage recent progress in deep neural networks for mobile devices and show that our proposed person detector, SmartPartNet, obtains performance similar to state-of-the-art pedestrian detection networks, while being 3× smaller and 5× faster.
机译:我们对使用商品智能手机进行可穿戴计算的基于图像的人检测算法有兴趣。我们专注于使用智能手机作为可穿戴设备,因为它是增强人类传感的实用手段,用于盲目或协助社交互动等航行等应用。我们确定为Body-Worn智能手机开发基于视觉的人探测器的两个独特功能:(1)探测器必须考虑使用可穿戴设备和(2)检测器拍摄的图像中的人数强的强偏差由于暗淡照明和快速的自我运动,必须考虑低图像质量,从而导致运动模糊。为了考虑使用可穿戴摄像机时身体部位的可见性的独特分配,我们提出了一种专门用于箱式智能手机的零件的人探测器。我们对部件信息的有用性进行广泛的消除分析,提供了几种关于不同应用领域的最佳人探测器的设计的见解。为了考虑我们的目标域中频繁发生的运动模糊,我们介绍了一种数据增强技术,以在训练期间生成合成运动模糊图像。除了寻址上述功能之外,最终检测器还必须仅使用智能手机资源实时运行。我们利用最近在移动设备的深度神经网络中的进展,并显示我们提出的人员探测器,SmartPartNet获得类似于最先进的行人检测网络的性能,而3×更小,5×更快。

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