使用贝叶斯回归学习机器人-物体距离及其在避碰场景中的应用

I. F. Ghalyan, Aneesh Jaydeep, V. Kapila
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引用次数: 1

摘要

在许多实际情况下,机器人可能会遇到在其工作空间中移动的物体,从而导致机器人或移动物体的不良后果。这种情况通常需要能够产生平面图像和深度测量的传感装置,例如Kinect传感器,以估计移动物体在3d空间中的位置。在本文中,我们的目标是估计移动物体沿着与相机镜头平面正交的轴的相对距离,从而减少依赖深度测量的需要,当物体太靠近传感器时,深度测量通常会产生噪声。具体来说,首先捕获具有不同正交距离的物体的多幅图像。在这一步中,测量物体到相机的距离,并计算物体的归一化面积,即归一化像素之和。计算归一化面积和测量距离都使用高斯平滑滤波器(GSF)进行滤波。接下来,建立贝叶斯统计模型,将计算的归一化面积与测量的距离进行映射。开发的贝叶斯线性模型允许预测相机传感器(或机器人)和物体之间的距离,给定归一化计算面积,从物体的二维图像中获得。为了评估相对距离估计过程的性能,建立了一个由配备相机的机器人组成的试验台。在统计模型的学习过程中,使用超声波传感器测量捕获图像对应的距离。在学习了模型后,将超声波传感器移除,使用所开发的模型在估计物体的距离时取得了优异的性能,一个人的手拿着卷尺,沿着与相机平面垂直的轴来回移动。
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Learning Robot-Object Distance Using Bayesian Regression with Application to A Collision Avoidance Scenario
In many practical situations, robots may encounter objects moving in their work space, resulting in undesirable consequences for either the robots or the moving objects. Such situations often call for sensing arrangements that can produce planar images along with depth measurements, e.g., Kinect sensors, to estimate the position of the moving object in 3-D space. In this paper, we aim to estimate the relative distance of a moving object along the axis orthogonal to a camera lens plane, thus relaxing the need to rely on depth measurements that are often noisy when the object is too close to the sensor. Specifically, multiple images of an object, with distinct orthogonal distances, are firstly captured. In this step, the object’s distance from the camera is measured and the normalized area, which is the normalized sum of pixels, of the object is computed. Both computed normalized area and measured distance are filtered using a Gaussian smoothing filter (GSF). Next, a Bayesian statistical model is developed to map the computed normalized area with the measured distance. The developed Bayesian linear model allows to predict the distance between the camera sensor (or robot) and the object given the normalized computed area, obtained from the 2-D images, of the object. To evaluate the performance of the relative distance estimation process, a test stand was built that consists of a robot equipped with a camera. During the learning process of the statistical model, an ultrasonic sensor was used for measuring the distance corresponding to the captured images. After learning the model, the ultrasonic sensor was removed and excellent performance was achieved when using the developed model in estimating the distance of an object, a human hand carrying a measurement tape, moving back and forth along the axis normal to the camera plane.
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