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A Self-Adaptive Parameter Selection Trajectory Prediction Approach via Hidden Markov Models

机译:隐马尔可夫模型的自适应参数选择轨迹预测方法

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Trajectory prediction of objects in moving objects databases (MODs) has garnered wide support in a variety of applications and is gradually becoming an active research area. The existing trajectory prediction algorithms focus on discovering frequent moving patterns or simulating the mobility of objects via mathematical models. While these models are useful in certain applications, they fall short in describing the position and behavior of moving objects in a network-constraint environment. Aiming to solve this problem, a hidden Markov model (HMM)-based trajectory prediction algorithm is proposed, called Hidden Markov model-based Trajectory Prediction (HMTP). By analyzing the disadvantages of HMTP, a self-adaptive parameter selection algorithm called HMTP is proposed, which captures the parameters necessary for real-world scenarios in terms of objects with dynamically changing speed. In addition, a density-based trajectory partition algorithm is introduced, which helps improve the efficiency of prediction. In order to evaluate the effectiveness and efficiency of the proposed algorithms, extensive experiments were conducted, and the experimental results demonstrate that the effect of critical parameters on the prediction accuracy in the proposed paradigm, with regard to HMTP , can greatly improve the accuracy when compared with HMTP, when subjected to randomly changing speeds. Moreover, it has higher positioning precision than HMTP due to its capability of self-adjustment.
机译:运动对象数据库(MODs)中对象的轨迹预测已在各种应用中获得了广泛的支持,并逐渐成为一个活跃的研究领域。现有的轨迹预测算法专注于发现频繁的运动模式或通过数学模型模拟物体的运动性。尽管这些模型在某些应用中很有用,但在描述网络受限环境中移动对象的位置和行为方面却不足。为了解决这个问题,提出了一种基于隐马尔可夫模型(HMM)的轨迹预测算法,称为基于隐马尔可夫模型的轨迹预测(HMTP)。通过分析HMTP的缺点,提出了一种名为HMTP的自适应参数选择算法,该算法根据动态变化的对象捕获现实场景中所需的参数。另外,引入了基于密度的轨迹划分算法,这有助于提高预测效率。为了评估所提算法的有效性和效率,进行了广泛的实验,实验结果表明,与HMTP相比,关键参数对所提范式中预测精度的影响可以大大提高精度。使用HMTP时,可以随机改变速度。此外,由于具有自我调节能力,因此其定位精度比HMTP高。

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