论文标题

部分可观测时空混沌系统的无模型预测

Integrated In-vehicle Monitoring System Using 3D Human Pose Estimation and Seat Belt Segmentation

论文作者

Kim, Ginam, Kim, Hyunsung, Kim, Joseph Kihoon, Cho, Sung-Sik, Park, Yeong-Hun, Kang, Suk-Ju

论文摘要

最近,随着对自动驾驶汽车的兴趣,对车辆内部驾驶员和乘客的监视系统的重要性一直在增加。本文提出了一种新型的车载监测系统,结合了3D姿势估计,座下座椅分割和座下皮带状态分类网络。我们的系统通过准确考虑车载环境的数据特性来输出监视所需的各种信息。具体而言,所提出的3D姿势估计直接估计驾驶员和乘客的关键点的绝对坐标,并且通过根据特征金字塔的特征性金字塔应用结构来实现所提出的座带分割。此外,我们提出了一项分类任务,以使用将3D姿势估计与座下分割结合的结果区分戴安全带的正常状态和异常状态。这些任务可以同时学习并实时运行。在我们新创建和注释的私人数据集上评估了我们的方法。实验结果表明,我们的方法具有明显的高性能,可以直接应用于实际车载监测系统。

Recently, along with interest in autonomous vehicles, the importance of monitoring systems for both drivers and passengers inside vehicles has been increasing. This paper proposes a novel in-vehicle monitoring system the combines 3D pose estimation, seat-belt segmentation, and seat-belt status classification networks. Our system outputs various information necessary for monitoring by accurately considering the data characteristics of the in-vehicle environment. Specifically, the proposed 3D pose estimation directly estimates the absolute coordinates of keypoints for a driver and passengers, and the proposed seat-belt segmentation is implemented by applying a structure based on the feature pyramid. In addition, we propose a classification task to distinguish between normal and abnormal states of wearing a seat belt using results that combine 3D pose estimation with seat-belt segmentation. These tasks can be learned simultaneously and operate in real-time. Our method was evaluated on a private dataset we newly created and annotated. The experimental results show that our method has significantly high performance that can be applied directly to real in-vehicle monitoring systems.

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