Quadruped locomotion is rapidly maturing to a degree where robots now routinely traverse a variety of unstructured terrains. However, while gaits can be varied typically by selecting from a range of pre-computed styles, current planners are unable to vary key gait parameters continuously while the robot is in motion. The synthesis, on-the-fly, of gaits with unexpected operational characteristics or even the blending of dynamic manoeuvres lies beyond the capabilities of the current state-of-the-art. In this work we address this limitation by learning a latent space capturing the key stance phases constituting a particular gait. This is achieved via a generative model trained on a single trot style, which encourages disentanglement such that application of a drive signal to a single dimension of the latent state induces holistic plans synthesising a continuous variety of trot styles. We demonstrate that specific properties of the drive signal map directly to gait parameters such as cadence, foot step height and full stance duration. Due to the nature of our approach these synthesised gaits are continuously variable online during robot operation and robustly capture a richness of movement significantly exceeding the relatively narrow behaviour seen during training. In addition, the use of a generative model facilitates the detection and mitigation of disturbances to provide a versatile and robust planning framework. We evaluate our approach on a real ANYmal quadruped robot and demonstrate that our method achieves a continuous blend of dynamic trot styles whilst being robust and reactive to external perturbations.
翻译:被四分五裂的滚动正在迅速发展到一个程度,机器人现在经常穿越各种未结构的地形。然而,虽然曲调通常可以通过从一系列预编的风格中选择,而使曲调有差异,但当机器人运动起来时,目前的规划者无法连续地改变关键步调参数。在空中合成带有出乎意料的操作特点的曲调,甚至混合动态动作,超出了当前状态的功能。在这项工作中,我们通过学习潜伏空间捕捉构成特定动作的关键姿势阶段来应对这一局限性。这是通过一个以单一阵列风格训练的基因化模型来实现的,这鼓励了将驱动信号应用到潜在状态的单一维度上,从而导致整体计划合成出一系列连续的曲调风格。我们证明驱动信号图的具体特性直接表现到音调参数,如音调、脚步高和全姿势持续时间。由于我们的做法的性质,这些合成的曲调在机器人操作期间不断在网上变换,并且通过一个动态的变异性模型来捕捉到一个动态的机型模型的精度运动的精度模型。我们在实际操作和稳化的机变的机变的机变的机变的机变的机化模型中提供了一种先进的机变的机变的机变的机变。