BioCD : An Efficient Algorithm for Self-collision and Distance Computation between Highly Articulated Molecular Models

V. R. D. Angulo, Juan Cortés, T. Siméon
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引用次数: 29

Abstract

This paper describes an efficient approach to (self) collision detection and distance computations for complex articulated mechanisms such as molecular chains. The proposed algorithm called BioCD is particularly designed for samplingbased motion planning on molecular models described by long kinematic chains possibly including cycles. The algorithm considers that the kinematic chain is structured into a number of rigid groups articulated by preselected degrees of freedom. This structuring is exploited by a two-level spatially-adapted hierarchy. The proposed algorithm is not limited to particular kinematic topologies and allows good collision detection times. BioCD is also tailored to deal with the particularities imposed by the molecular context on collision detection. Experimental results show the effectiveness of the proposed approach which is able to process thousands of (self) collision tests per second on flexible protein models with up to hundreds of degrees of freedom.
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一种高效的分子模型自碰撞和距离计算算法
本文描述了一种有效的(自)碰撞检测和分子链等复杂铰接机构距离计算方法。所提出的算法称为BioCD,是专门为基于采样的运动规划而设计的,该运动规划是由长运动链(可能包括周期)描述的分子模型。该算法认为运动链是由预先选择的自由度铰接成若干刚性组。这种结构由两层空间适应层次结构利用。该算法不局限于特定的运动拓扑,并允许良好的碰撞检测时间。BioCD还专门用于处理分子环境对碰撞检测施加的特殊性。实验结果表明,该方法能够对具有数百个自由度的柔性蛋白质模型每秒进行数千次(自)碰撞测试。
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