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An improved approach for model-based detection and pose estimation of texture-less objects

机译:一种基于模型的无纹理物体检测和姿态估计的改进方法

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Detection and pose estimation of texture-less objects still faces several challenges such as foreground occlusions, background clutter, multi-instance objects, large scale and pose changes to name but a few. In this paper, we present an improved approach for model based detection and pose estimation of texture-less objects, LINEMOD [4], in order to improve the robustness of pose estimation with partial foreground occlusions. For template creation, we modify Gradient Response Maps and propose Gradient Orientation Maps, where Non-Maximum Suppression and Dual Threshold Algorithm are applied. And we adopt image pyramid searching method for fast template matching. Next, the approximate object pose associated with each detected template is used as a starting point for fine pose estimation with Iterative Closest Point algorithm. Thirdly, we improve the accuracy of fine pose estimation by using point cloud filter. Experimental results show that our approach is more robust to estimate the pose of texture-less objects with partial foreground occlusions.
机译:无纹理物体的检测和姿态估计仍然面临着一些挑战,例如前景遮挡,背景杂乱,多实例物体,大规模和仅举几例的姿态变化。在本文中,我们提出了一种改进的方法,用于基于模型的无纹理物体检测和姿态估计,LINEMOD [4],以提高局部前景遮挡的姿态估计的鲁棒性。对于模板创建,我们修改了“梯度响应图”并提出了“梯度方向图”,其中应用了“非最大抑制”和“双重阈值算法”。并且我们采用图像金字塔搜索方法进行快速模板匹配。接下来,将与每个检测到的模板关联的近似对象姿态用作通过迭代最近点算法进行精细姿态估计的起点。第三,我们通过使用点云滤波器提高了精细姿态估计的准确性。实验结果表明,我们的方法对于估计具有部分前景遮挡的无纹理对象的姿态更为稳健。

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