机器人应用中基于单图像的深度估计

Anupa Sabnis, L. Vachhani
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引用次数: 11

摘要

机器人视觉的目标是利用视觉感知的能力来观察和感知环境并做出反应。视觉反馈通过估计物体的深度来操纵机器人。本文提出了一种基于离焦模糊的深度估计技术。通过应用锐化滤波器,从同一物体的散焦图像中获得物体的清晰图像。利用物体的散焦和清晰图像来计算与物体深度相关的扩散参数。该方法计算恒定摄像机参数。该方法的主要优点是机器人使用单幅图像来估计深度。该方法不受光照条件的影响,可适用于不同边缘方向的图像。在真实场景图像上的实验证明了该方法的可行性。结果表明,深度估计的平均误差在真值的2%以内。将该方法与现有方法进行了比较。
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Single image based depth estimation for robotic applications
Goal of the robot vision is to exploit power of visual sensing to observe and perceive the environment and react it. Visual feedback is used to manipulate the robot among objects by estimating their depths. This paper presents a depth estimation technique based on the defocus blur associated with a camera setting. A sharp image of an object is obtained from a defocused image of the same object by applying sharpening filter. The defocused and sharp images of the object are used to calculate the spread parameter which is related to the object depth. The method calculates the constant camera parameters. The main advantage of this method is use of a single image by the robot to estimate depth. The method is independent of illumination condition and can be applied to the images with different edge orientations. Experiments on real scene images have demonstrated the feasibility of the proposed method for depth estimation. The results indicate that the depth estimation average errors are within two percent of true values. The proposed method is compared with the existing methods.
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