Recognition techniques allow robots to make proper planning and control strategies to manipulate various objects. Object recognition is more reliable when made by combining several percepts, e.g., vision and haptics. One of the distinguishing features of each object's material is its heat properties, and classification can exploit heat transfer, similarly to human thermal sensation. Thermal-based recognition has the advantage of obtaining contact surface information in realtime by simply capturing temperature change using a tiny and cheap sensor. However, heat transfer between a robot surface and a contact object is strongly affected by the initial temperature and environmental conditions. A given object's material cannot be recognized when its temperature is the same as the robotic grippertip. We present a material classification system using active temperature controllable robotic gripper to induce heat flow. Subsequently, our system can recognize materials independently from their ambient temperature. The robotic gripper surface can be regulated to any temperature that differentiates it from the touched object's surface. We conducted some experiments by integrating the temperature control system with the Academic SCARA Robot, classifying them based on a long short-term memory (LSTM) using temperature data obtained from grasping target objects.
翻译:识别技术使机器人能够制定适当的规划和控制策略来操纵各种物体。当将若干感知(例如视觉和机能)结合起来时,物体的识别就更加可靠。每个物体材料的显著特征之一是其热性,分类可以利用热传导,类似于人类热感。基于热传感的识别具有通过仅仅用微小和廉价的传感器捕捉温度变化而实时获取接触表面信息的优势。然而,机器人表面和接触对象之间的热传导受到初始温度和环境条件的严重影响。当某一物体的材料与机器人抓抓取器相同时,则无法识别该物体的材料。我们展示了一个材料分类系统,使用活性温度控制机器人抓抓器来诱发热流。随后,我们的系统可以独立于其环境温度温度温度感知材料。机器人抓取器表面可以与任何温度区别于被接触对象表面的温度调节。我们进行了一些实验,将温度控制系统与学术的SCARA机器人结合,根据从抓取目标中获得的温度数据对它们进行长期的内存(LSTM)进行分类。