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Low-cost GelSight with UV Markings: Feature Extraction of Objects Using AlexNet and Optical Flow without 3D Image Reconstruction

机译:带有UV标记的低成本GelSight:使用AlexNet和光流特征提取物体,而无需3D图像重建

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GelSight sensor has been used to study microgeometry of objects since 2009 in tactile sensing applications. Elastomer, reflective coating, lighting, and camera were the main challenges of making a GelSight sensor within a short period. The recent addition of permanent markers to the GelSight was a new era in shear/slip studies. In our previous studies, we introduced Ultraviolet (UV) ink and UV LEDs as a new form of marker and lighting respectively. UV ink markers are invisible using ordinary LED but can be made visible using UV LED. Currently, recognition of objects or surface textures using GelSight sensor is done using fusion of camera-only images and GelSight captured images with permanent markings. Those images are fed to Convolutional Neural Networks (CNN) to classify objects. However, our novel approach in using low-cost GelSight sensor with UV markings, the 3D height map to 2D image conversion, and the additional non-Gelsight captured images for training the CNN can be eliminated. AlexNet and optical flow algorithm have been used for feature recognition of five coins without UV markings and shear/slip of the coin in GelSight with UV markings respectively. Our results on confusion matrix show that, on average coin recognition can reach 93.4% without UV markings using AlexNet. Therefore, our novel method of using GelSight with UV markings would be useful to recognize full/partial object, shear/slip, and force applied to the objects without any 3D image reconstruction.
机译:自2009年以来,GelSight传感器已用于研究触觉应用中物体的微几何形状。弹性体,反射涂层,照明和照相机是在短时间内制造GelSight传感器的主要挑战。最近在GelSight中添加永久性标记是剪切/滑移研究的新纪元。在我们以前的研究中,我们分别引入了紫外线(UV)墨水和紫外线LED作为标记和照明的新形式。使用普通的LED看不见UV墨水标记,但是使用UV LED可以使其可见。当前,通过使用仅摄像机图像和带有永久标记的GelSight捕获图像的融合,使用GelSight传感器识别物体或表面纹理。这些图像被馈送到卷积神经网络(CNN)进行对象分类。但是,可以消除使用带有UV标记的低成本GelSight传感器,从3D高度图到2D图像的转换以及用于训练CNN的其他非Galsight捕获图像的新颖方法。 AlexNet和光流算法已用于五个没有UV标记的硬币的特征识别,以及在带有UV标记的GelSight中分别对硬币的剪切/滑移进行特征识别。我们在混淆矩阵上的结果表明,使用AlexNet的情况下,在没有UV标记的情况下,平均硬币识别率可以达到93.4%。因此,我们使用带有UV标记的GelSight的新颖方法将有助于识别完整/部分物体,剪切/滑移以及施加到物体的力,而无需任何3D图像重建。

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