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Online Self-body Image Acquisition Considering Changes in Muscle Routes Caused by Softness of Body Tissue for Tendon-driven Musculoskeletal Humanoids

机译:在线自身图像采集,考虑肌腱肌组织柔软性肌肉途径的变化,用于肌腱驱动的肌肉骨骼人型

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Tendon-driven musculoskeletal humanoids have many benefits in terms of the flexible spine, multiple degrees of freedom, and variable stiffness. At the same time, because of its body complexity, there are problems in controllability. First, due to the large difference between the actual robot and its geometric model, it cannot move as intended and large internal muscle tension may emerge. Second, movements which do not appear as changes in muscle lengths may emerge, because of the muscle route changes caused by softness of body tissue. To solve these problems, we construct two models: ideal joint-muscle model and muscle-route change model, using a neural network. We initialize these models by a man-made geometric model and update them online using the sensor information of the actual robot. We validate that the tendon-driven musculoskeletal humanoid Kengoro is able to obtain a correct self-body image through several experiments.
机译:肌腱驱动的肌肉骨骼人形型在柔性脊柱,多程度的自由度和可变刚度方面具有许多益处。同时,由于其身体复杂性,可控性存在问题。首先,由于实际机器人与其几何模型之间的巨大差异,它不能像预期的,并且可能会出现大型内部肌张力。其次,由于身体组织的柔软性引起的肌肉路径变化,因此可能出现不出现的运动,这不会出现在肌肉长度的变化。为了解决这些问题,我们建造了两种型号:使用神经网络,构建了两个模型:理想的关节肌肉模型和肌肉路线变化模型。我们通过人造几何模型初始化这些模型,并使用实际机器人的传感器信息在线更新它们。我们验证肌腱驱动的肌肉骨骼人形Kengoro能够通过几个实验获得正确的自身图像。

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