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Performance Evaluation of Cost-Based vs. Fuzzy-Logic-Based Prediction Approaches in PRIDE

机译:基于成本的与模糊逻辑的预测方法的性能评估

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PRIDE (PRediction In Dynamic Environments) is a hierarchical multi-resolutional framework for moving object prediction. PRIDE incorporates multiple prediction algorithms into a single, unifying framework. To date, we have applied this framework to predict the future location of autonomous vehicles during on-road driving. In this paper, we describe two different approaches to compute long-term predictions (on the order of seconds into the future) within PRIDE. The first is a cost-based approach that uses a discretized set of vehicle motions and costs associated with states and actions to compute probabilities of vehicle motion. The cost-based approach is the first prediction approach we have been using within PRIDE. The second is a fuzzy-logic-based approach that deals with the pervasive presence of uncertainty in the environment to negotiate complex traffic situations.
机译:骄傲(动态环境中的预测)是用于移动对象预测的分层多解框架。私生将多个预测算法包含到单个统一框架中。迄今为止,我们已应用此框架以预测在路上驾驶期间自治车辆的未来位置。在本文中,我们描述了两种不同的方法,以在骄傲内计算长期预测(在未来的秒数)。首先是一种基于成本的方法,它使用与状态和动作相关的离散的车辆运动和成本来计算车辆运动的概率。基于成本的方法是我们在骄傲中使用的第一种预测方法。第二种是一种基于模糊的逻辑方法,涉及在环境中普遍存在的存在,以协商复杂的交通情况。

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