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Real-Time RGB-D Activity Prediction by Soft Regression

机译:软回归的实时RGB-D活动预测

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In this paper, we propose a novel approach for predicting ongoing activities captured by a low-cost depth camera. Our approach avoids a usual assumption in existing activity prediction systems that the progress level of ongoing sequence is given. We overcome this limitation by learning a soft label for each subsequence and develop a soft regression framework for activity prediction to learn both predictor and soft labels jointly. In order to make activity prediction work in a real-time manner, we introduce a new RGB-D feature called "local accumulative frame feature (LAFF)", which can be computed efficiently by constructing an integral feature map. Our experiments on two RGB-D benchmark datasets demonstrate that the proposed regression-based activity prediction model outperforms existing models significantly and also show that the activity prediction on RGB-D sequence is more accurate than that on RGB channel.
机译:在本文中,我们提出了一种新的方法,可以预测低成本深度相机捕获的持续活动。我们的方法避免了在现有的活动预测系统中常用的假设,即持续序列的进度级别。我们通过学习每个子序列的软标签来克服此限制,并开发活动预测的软回归框架,以共同学习预测因子和软标签。为了以实时方式制作活动预测工作,我们介绍一个名为“本地累积帧特征(LAFF)”的新RGB-D功能,其可以通过构造积分特征图来有效地计算。我们对两个RGB-D基准数据集的实验表明,所提出的基于回归的活动预测模型显着优于现有模型,并且还表明RGB-D序列的活动预测比RGB通道更准确。

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