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Method and system for vision-centric deep-learning-based road situation analysis

机译:基于视觉为中心的深度学习道路状况分析的方法和系统

摘要

In accordance with various embodiments of the disclosed subject matter, a method and a system for vision-centric deep-learning-based road situation analysis are provided. The method can include: receiving real-time traffic environment visual input from a camera; determining, using a ROLO engine, at least one initial region of interest from the real-time traffic environment visual input by using a CNN training method; verifying the at least one initial region of interest to determine if a detected object in the at least one initial region of interest is a candidate object to be tracked; using LSTMs to track the detected object based on the real-time traffic environment visual input, and predicting a future status of the detected object by using the CNN training method; and determining if a warning signal is to be presented to a driver of a vehicle based on the predicted future status of the detected object.
机译:根据所公开的主题的各种实施例,提供了一种用于以视觉为中心的基于深度学习的道路状况分析的方法和系统。该方法可以包括:从摄像机接收实时交通环境视觉输入;以及使用ROLO引擎,通过使用CNN训练方法从实时交通环境视觉输入中确定至少一个初始感兴趣区域;验证所述至少一个初始感兴趣区域,以确定在所述至少一个初始感兴趣区域中的检测到的对象是否为待跟踪的候选对象;使用LSTM基于实时交通环境的视觉输入来跟踪检测到的物体,并通过CNN训练方法预测检测到的物体的未来状态;根据检测到的物体的预测未来状态,确定是否要向车辆驾驶员发出警告信号。

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