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受黏液霉菌启发的数据平滑和样条曲线的材料近似法

Material approximation of data smoothing and spline curves inspired by slime mould.

作者信息

Jones Jeff, Adamatzky Andrew

机构信息

Centre for Unconventional Computing, University of the West of England, Coldharbour Lane, Bristol, BS16 1QY, UK.

出版信息

Bioinspir Biomim. 2014 Sep;9(3):036016. doi: 10.1088/1748-3182/9/3/036016. Epub 2014 Jun 30.

Abstract

The giant single-celled slime mould Physarum polycephalum is known to approximate a number of network problems via growth and adaptation of its protoplasmic transport network and can serve as an inspiration towards unconventional, material-based computation. In Physarum, predictable morphological adaptation is prevented by its adhesion to the underlying substrate. We investigate what possible computations could be achieved if these limitations were removed and the organism was free to completely adapt its morphology in response to changing stimuli. Using a particle model of Physarum displaying emergent morphological adaptation behaviour, we demonstrate how a minimal approach to collective material computation may be used to transform and summarise properties of spatially represented datasets. We find that the virtual material relaxes more strongly to high-frequency changes in data, which can be used for the smoothing (or filtering) of data by approximating moving average and low-pass filters in 1D datasets. The relaxation and minimisation properties of the model enable the spatial computation of B-spline curves (approximating splines) in 2D datasets. Both clamped and unclamped spline curves of open and closed shapes can be represented, and the degree of spline curvature corresponds to the relaxation time of the material. The material computation of spline curves also includes novel quasi-mechanical properties, including unwinding of the shape between control points and a preferential adhesion to longer, straighter paths. Interpolating splines could not directly be approximated due to the formation and evolution of Steiner points at narrow vertices, but were approximated after rectilinear pre-processing of the source data. This pre-processing was further simplified by transforming the original data to contain the material inside the polyline. These exemplary results expand the repertoire of spatially represented unconventional computing devices by demonstrating a simple, collective and distributed approach to data and curve smoothing.

摘要

巨大的单细胞黏菌多头绒泡菌(Physarum polycephalum)已知可通过其原生质运输网络的生长和适应来近似解决一些网络问题,并且能为基于非传统材料的计算提供灵感。在多头绒泡菌中,其对下层基质的黏附会阻止可预测的形态适应。我们研究了如果去除这些限制,并且该生物体能够自由地根据变化的刺激完全调整其形态,可能会实现哪些计算。使用展示出涌现形态适应行为的多头绒泡菌粒子模型,我们证明了一种用于集体材料计算的极简方法可如何用于转换和总结空间表示数据集的属性。我们发现虚拟材料对数据中的高频变化反应更强,这可通过在一维数据集中近似移动平均和低通滤波器来用于数据的平滑(或滤波)。该模型的松弛和最小化属性使得能够在二维数据集中对B样条曲线(近似样条)进行空间计算。开放和封闭形状的夹紧和未夹紧样条曲线均可表示,并且样条曲率程度对应于材料的松弛时间。样条曲线的材料计算还包括新颖的准机械属性,包括控制点之间形状的展开以及对更长、更直路径的优先黏附。由于在狭窄顶点处会形成和演化斯坦纳点,插值样条无法直接近似,但在对源数据进行直线预处理后可以近似。通过将原始数据转换为使折线内部包含材料,进一步简化了这种预处理。这些示例性结果通过展示一种用于数据和曲线平滑的简单、集体和分布式方法,扩展了空间表示的非传统计算设备的范围。

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