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Real-Time Human Body Pose Estimation for In-Car Depth Images

机译:车内景深图像的实时人体姿态估计

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摘要

Over the next years, the number of autonomous vehicles is expected to increase. This new paradigm will change the role of the driver inside the car. and so, for safety purposes, the continuous monitoring of the driver/passengers becomes essential. This monitoring can be achieved by detecting the human body pose inside the car to understand the driver/passenger's activity. In this paper, a method to accurately detect the human body pose on depth images acquired inside a car with a time-of-flight camera is proposed. The method consists in a deep learning strategy where the architecture of the convolutional neural network used is composed by three branches: the first branch is used to estimate the confidence maps for each joint position, the second one to associate different body parts, and the third branch to detect the presence of each joint in the image. The proposed framework was trained and tested in 8820 and 1650 depth images, respectively. The method showed to be accurate, achieving an average distance error between the detected joints and the ground truth of 7.6 pixels and an average accuracy, precision, and recall of 95.6%, 96.0%, and 97.8% respectively. Overall, these results demonstrate the robustness of the method and its potential for in-car body pose monitoring purposes.
机译:在未来几年中,自动驾驶汽车的数量有望增加。这种新的范例将改变驾驶员在车内的作用。因此,为了安全起见,对驾驶员/乘客进行连续监控至关重要。可以通过检测车内的人体姿势来了解驾驶员/乘客的活动来实现此监视。在本文中,提出了一种利用飞行时间相机来准确检测人体在车内获取的深度图像上的姿势的方法。该方法包括深度学习策略,其中所使用的卷积神经网络的体系结构由三个分支组成:第一个分支用于估计每个关节位置的置信度图,第二个分支用于关联不同的身体部位,第三个分支分支以检测图像中每个关节的存在。所提出的框架分别在8820和1650深度图像中进行了培训和测试。该方法显示出了准确性,实现了检测到的关节之间的平均距离误差和7.6个像素的地面真实性,平均准确性,准确性和召回率分别为95.6%,96.0%和97.8%。总体而言,这些结果证明了该方法的鲁棒性及其在车身姿态监测中的潜力。

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