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Measuring In-Building Spatial-Temporal Human Distribution through Monocular Image Data Considering Deep Learning-Based Image Depth Estimation

机译:考虑基于深度学习的图像深度估计,通过单眼图像数据测量建立空间的人类分布

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This research estimated the spatial-temporal distribution of humans in buildings through image sensing. Inputs were the in-building network, image sequences recording the movement of human, and camera parameters. Object detection and tracking models were utilized to discover humans in the images. Image depth estimation, clustering, and the camera model were integrated for the association of human and the in-building space in the image coordinates with the real world coordinates. The temporal human count for each in-building space was acquired. To validate the approach, two real cases in a school building, at a corridor and a hallway, were tested, and a synthesized case was carried out to exclude error from the detection and tracking steps. The proposed approach achieved results comparable to those of manual counting.
机译:本研究估计了通过图像感测到建筑物中人类的空间 - 时间分布。 输入是建立网络,记录人类运动和摄像机参数的建立网络,图像序列。 使用对象检测和跟踪模型来发现图像中的人类。 图像深度估计,聚类和相机模型被整合为人类和建筑物坐标中的建立空间与现实世界坐标。 获得了每个建筑空间的时间人数。 为了验证该方法,测试了一个在学校建筑物,走廊和走廊中的实际情况,并进行了合成的情况,以排除检测和跟踪步骤的错误。 所提出的方法实现了与手动计数相当的结果。

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