论文标题

复杂性和熵的自由落体纸张运动

Clustering free-falling paper motion with complexity and entropy

论文作者

Pessa, Arthur A. B., Perc, Matjaz, Ribeiro, Haroldo V.

论文摘要

许多简单的自然现象的特征是复杂的运动,乍一看似乎是随机的,但是通常会显示可以集中在组中的基本模式和行为。掉落空气的小纸的运动是这些系统之一,其完整的数学描述似乎是不可行的。因此,了解这些类型的运动需要自动实验,能够生成涵盖不同行为的大型数据集 - 这项任务仅在计算机视觉和机器学习方法方面的进步才能使其变得可行。在这里,我们使用了与不同形状自由垂涎的动作有关的这些数据集之一,以提出一种信息理论方法,该方法自动簇起不同类型的行为。我们评估了与摄像机捕获的自由落体纸质纸的可观察到的空间相关的时间序列的置换熵和统计复杂性。我们发现混乱和翻滚动作具有不同的平均熵和复杂程度,使我们可以通过简单的无监督机器学习算法准确区分这两种行为。我们的方法具有基于物理量的其他方法可比性的性能,但不取决于重建三维下降轨迹。

Many simple natural phenomena are characterized by complex motion that appears random at first glance, but that often displays underlying patterns and behavior that can be clustered in groups. The movement of small pieces of paper falling through the air is one of these systems whose complete mathematical description seems unworkable. Understanding these types of motion thus demands automated experimentation capable of producing large datasets covering different behaviors -- a task that has become feasible only recently with advances in computer vision and machine learning methods. Here we use one of these datasets related to the motion of free-falling paper with different shapes to propose an information-theoretical approach that automatically clusters different types of behavior. We evaluate the permutation entropy and statistical complexity from time series related to the observable area of free-falling paper pieces captured by a video camera. We find that chaotic and tumbling motions have a distinct average degree of entropy and complexity, allowing us to accurately discriminate between these two types of behavior with a simple unsupervised machine learning algorithm. Our method has a performance comparable to other approaches based on physical quantities but does not depend on reconstructing the three-dimensional falling trajectory.

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