Improving Humanoid Grasp Success Rate based on Uncertainty-aware Metrics and Sensitivity Optimization

W.-J. Baek, C. Pohl, Philipp Pelcz, T. Kröger, T. Asfour
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Abstract

We present an approach for the selection of robot grasp candidates by treating specified metrics in a probabilistic manner and maximizing the success rate through statistical optimization. Recently, progress has been made in grasping unknown objects in cluttered scenes by using deep neural networks or incorporating classifiers. Although existing methods deliver promising results, they either lack explainability or fail to account for uncertainties that accumulate over the entire system. To address this shortcoming, we optimize a ranking score based on the sensitivities of the grasp success with respect to a set of metrics. These sensitivities reflect each metric's contribution to the success. To perform this optimization, we refer to a dataset of 932 randomly selected grasps recorded under real-world conditions with the humanoid robot ARMAR-6. By validating our approach on a separate data collection of 187 physical real- world grasps, we demonstrate that our approach yields a success rate of 73.8 %, amounting to an improvement of more than 40 % compared to a random grasp selection. The results exemplify that sensitivity optimization, scarcely applied in the context of robotic applications so far, can significantly enhance the grasp success by considering respective metrics in the face of uncertainties.
基于不确定性感知度量和灵敏度优化的仿人抓取成功率提高
我们提出了一种选择机器人抓握候选对象的方法,该方法以概率的方式处理指定的指标,并通过统计优化最大化成功率。近年来,利用深度神经网络或结合分类器在混乱场景中抓取未知物体方面取得了进展。尽管现有的方法提供了有希望的结果,但它们要么缺乏可解释性,要么无法解释在整个系统中积累的不确定性。为了解决这个缺点,我们基于对一组度量标准的把握成功的敏感性来优化排名分数。这些敏感性反映了每个指标对成功的贡献。为了实现这一优化,我们参考了932个随机选择的抓取数据集,这些数据集是由仿人机器人ARMAR-6在现实条件下记录的。通过在187个物理真实世界抓取的单独数据集上验证我们的方法,我们证明我们的方法产生了73.8%的成功率,与随机抓取选择相比,提高了40%以上。结果表明,迄今为止很少应用于机器人应用的灵敏度优化可以在面对不确定性时考虑各自的指标,从而显着提高抓取成功率。
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