Legged robot navigation in unstructured and slippery terrains depends heavily on the ability to accurately identify the quality of contact between the robot's feet and the ground. Contact state estimation is regarded as a challenging problem and is typically addressed by exploiting force measurements, joint encoders and/or robot kinematics and dynamics. In contrast to most state of the art approaches, the current work introduces a novel probabilistic method for estimating the contact state based solely on proprioceptive sensing, as it is readily available by Inertial Measurement Units (IMUs) mounted on the robot's end effectors. Capitalizing on the uncertainty of IMU measurements, our method estimates the probability of stable contact. This is accomplished by approximating the multimodal probability density function over a batch of data points for each axis of the IMU with Kernel Density Estimation. The proposed method has been extensively assessed against both real and simulated scenarios on bipedal and quadrupedal robotic platforms such as ATLAS, TALOS and Unitree's GO1.
翻译:在非结构化和滑滑的地形中,牵引的机器人导航在很大程度上取决于能否准确确定机器人脚和地面之间的接触质量。联系状态估计被视为一个具有挑战性的问题,通常通过利用力量测量、联合编码器和(或)机器人运动动力学和动态来加以解决。与大多数先进方法相比,目前的工作采用了一种新颖的概率方法来估计接触状态,仅以自行感知感测为基础,因为安装在机器人终端效应器上的惰性测量单位(IMU)很容易获得这种方法。利用IMU测量的不确定性,我们的方法估计了稳定接触的可能性。这是通过对IMU每个轴的多式概率密度功能进行近似一组数据点和内核密度动画来达到的。提议的方法已经根据亚图拉西、TALOS和Unicree GO1等两极和四极机器人平台上的真实和模拟情景进行了广泛的评估。</s>