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Deep Tactile Experience: Estimating Tactile Sensor Output from Depth Sensor Data

机译:深度触觉体验:估算从深度传感器数据输出的触觉传感器

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Tactile sensing is inherently contact based. To use tactile data, robots need to make contact with the surface of an object. This is inefficient in applications where an agent needs to make a decision between multiple alternatives that depend the physical properties of the contact location. We propose a method to get tactile data in a non-invasive manner. The proposed method estimates the output of a tactile sensor from the depth data of the surface of the object based on past experiences. An experience dataset is built by allowing the robot to interact with various objects, collecting tactile data and the corresponding object surface depth data. We use the experience dataset to train a neural network to estimate the tactile output from depth data alone. We use GelSight tactile sensors, an image-based sensor, to generate images that capture detailed surface features at the contact location. We train a network with a dataset containing 578 tactile-image to depth- map correspondences. Given a depth-map of the surface of an object, the network outputs an estimate of the response of the tactile sensor, should it make a contact with the object. We evaluate the method with structural similarity index matrix (SSIM), a similarity metric between two images commonly used in image processing community. We present experimental results that show the proposed method outperforms a baseline that uses random images with statistical significance getting an SSIM score of 0.84 ± 0.0056 and 0.80 ± 0.0036, respectively.
机译:触觉感测本质上是基于接触的。要使用触觉数据,机器人需要与对象的表面接触。这在代理需要在取决于联系人位置的物理属性的多个替代方案之间做出决定的应用中,这效率低。我们提出了一种以非侵入方式获得触觉数据的方法。该方法估计根据过去的经验,从物体表面的深度数据估计触觉传感器的输出。通过允许机器人与各种对象进行交互,收集触觉数据和相应的对象表面深度数据来构建体验数据集。我们使用经验数据集培训神经网络,以估计单独的深度数据的触觉输出。我们使用Gelight触觉传感器,基于图像的传感器,生成捕获接触位置的详细表面特征的图像。我们用包含578个触觉图像的数据集训练网络到深度地图对应关系。给定对象表面的深度图,如果它与对象接触,则网络输出触觉传感器的响应的估计。我们评估具有结构相似索引矩阵(SSIM)的方法,在图像处理社区中常用的两个图像之间的相似性度量。我们提出了实验结果,显示了所提出的方法优于使用统计显着性的随机图像的基线,SSIM分别分别为0.84±0.0056和0.80±0.0036。

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