论文标题
DogTouch:基于CNN的识别具有高密度触觉传感器的四倍的机器人对表面纹理的识别
DogTouch: CNN-based Recognition of Surface Textures by Quadruped Robot with High Density Tactile Sensors
论文作者
论文摘要
在各种地形上进行运动的能力对于腿部机器人至关重要。但是,机器人必须更好地了解其在不同地形上进行强大运动的表面。动物和人类能够在脚上的触觉感觉的帮助下识别表面。虽然,腿部机器人的脚触觉并没有得到太多探索。本文介绍了有关触觉脚(TSF)的新型四足机器人Dogtouch的研究。 TSF允许使用触觉传感器和卷积神经网络(CNN)识别不同的表面纹理。实验结果表明,我们训练有素的基于CNN的模型的足够验证精度为74.37 \%,对线模式的90 \%\%的识别最高。将来,我们计划通过呈现各种模式深度的表面样本,并应用高级深度学习和浅层学习模型来改善预测模型。 此外,我们提出了一种新颖的方法来导航四足动物和腿部机器人。我们可以安排触觉铺路纹理表面(类似于盲人或视力障碍的人)。因此,只需识别将指示直路,左或右转弯,行人穿越,道路等的特定触觉图案,就可以在未知环境中移动dogtouch,无论光线如何,都将允许强大的导航。配备了视觉和触觉感知系统的未来四倍的机器人将能够在非结构化的室内和室外环境中安全,智能地导航和互动。
The ability to perform locomotion in various terrains is critical for legged robots. However, the robot has to have a better understanding of the surface it is walking on to perform robust locomotion on different terrains. Animals and humans are able to recognize the surface with the help of the tactile sensation on their feet. Although, the foot tactile sensation for legged robots has not been much explored. This paper presents research on a novel quadruped robot DogTouch with tactile sensing feet (TSF). TSF allows the recognition of different surface textures utilizing a tactile sensor and a convolutional neural network (CNN). The experimental results show a sufficient validation accuracy of 74.37\% for our trained CNN-based model, with the highest recognition for line patterns of 90\%. In the future, we plan to improve the prediction model by presenting surface samples with the various depths of patterns and applying advanced Deep Learning and Shallow learning models for surface recognition. Additionally, we propose a novel approach to navigation of quadruped and legged robots. We can arrange the tactile paving textured surface (similar that used for blind or visually impaired people). Thus, DogTouch will be capable of locomotion in unknown environment by just recognizing the specific tactile patterns which will indicate the straight path, left or right turn, pedestrian crossing, road, and etc. That will allow robust navigation regardless of lighting condition. Future quadruped robots equipped with visual and tactile perception system will be able to safely and intelligently navigate and interact in the unstructured indoor and outdoor environment.