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LEAST SQUARES FITTING OF ANALYTIC PRIMITIVES ON A GPU

机译:在GPU上最小二乘法拟合分析原语

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Metrology systems take coordinate information directly from the surface of a manufactured part and generate millions of (X, Y, Z) data points. The inspection process often involves fitting analytic primitives such as sphere, cone, torus, cylinder and plane to these points which represent an object with the corresponding shape. Typically, a least squares fit of the parameters of the shape to the point set is performed. The least squares fit attempts to minimize the sum of the squares of the distances between the points and the primitive. The objective function however, cannot be solved in the closed form and numerical minimization techniques are required to obtain the solution. These techniques as applied to primitive fitting entail iteratively solving large systems of linear equations generally involving arithmetic intensive operations. The current problem in-process metrology faces is the large computational time for the analysis of these millions of streaming data points. This paper presents a framework to address the bottleneck using a Graphical Processing Unit (GPU), to optimize operations and obtain significant gain in computation time.
机译:计量系统直接从制造零件的表面获取坐标信息,并生成数百万个(X,Y,Z)数据点。检查过程通常涉及将诸如球体,圆锥,圆环,圆柱体和平面之类的分析图元拟合到这些点,这些点代表具有相应形状的对象。通常,执行形状参数与点集的最小二乘拟合。最小二乘拟合试图最小化点与图元之间的距离的平方和。但是,目标函数不能以封闭形式求解,因此需要使用数值最小化技术来获得解。这些应用于原始拟合的技术需要迭代求解通常涉及算术密集运算的大型线性方程组。过程中计量面临的当前问题是用于分析这数百万个流数据点的大量计算时间。本文提出了一个使用图形处理单元(GPU)解决瓶颈,优化操作并在计算时间上获得可观收益的框架。

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