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Using Diverse Neural Networks for Safer Human Pose Estimation: Towards Making Neural Networks Know When They Don’t Know

机译:利用不同的神经网络进行更安全的人类姿态估计:在他们不知道的时候让神经网络知道

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In recent years, human pose estimation has seen great improvements by the use of neural networks. However, these approaches are unsuitable for safety-critical applications such as human-robot interaction (HRI), as no guarantees are given whether a produced detection is correct or not and false detections with high confidence scores are produced on a regular basis.In this work, we propose a method to identify and eliminate false detections by comparing keypoint detections from different neural networks and assigning a ’Don’t know’ label in the case of a mismatch. Our approach is driven by the principle of software diversity, a technique recommended by the safety standard IEC 61508-7 [1] for dealing with software implementation faults. We evaluate our general concept on the MPII human pose dataset [2] using available ground truth data to calculate a suitable threshold for our keypoint comparison, reducing the number of false detections by approx. 61%. For the application at runtime, where no ground truth data is available, we introduce a method to calculate the needed threshold directly from keypoint detections. In further experiments, it was possible to reduce the number of false detections by approx. 75%. Eliminating keypoints by comparison also lowers the correct detection rate, which we maintained above 75% in all experiments. As this effect is limited and non-critical regarding safety we believe that the proposed approach can lead the way to a safe use of neural networks for human pose estimation in the future.
机译:近年来,人类的姿势估计通过使用神经网络已经看到了很大的改善。然而,这些方法不适用于人员机器人交互(HRI)等安全关键应用,因为没有保证产生的检测是正确的,而不是定期生产具有高置信分数的错误检测。在此工作,我们提出了一种通过比较来自不同神经网络的关键点检测并在不匹配的情况下分配“不知道”标签来识别和消除错误检测的方法。我们的方法是通过软件多样性的原则驱动的,安全标准IEC 61508-7 [1]推荐的技术,用于处理软件实现故障。我们在MPII人类姿势数据集中评估我们的一般概念使用可用的地面真理数据来计算我们的关键点比较的合适阈值,从而减少了误报的数量。 61%。对于运行时的应用程序,在没有地面真理数据的情况下,我们介绍一种方法来直接从关键点检测计算所需的阈值。在进一步的实验中,可以减少假检测的数量约。 75%。通过比较消除关键点也降低了正确的检测率,在所有实验中我们维持在75%以上。由于这种效果是有限的,并且关于安全性是无关紧要的,我们相信该拟议的方法可以在未来安全使用神经网络的安全性估算。

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