Surrounding vehicle behavior recognition method based on smartphone and RNN

A technology of smart phones and recognition methods, applied in neural learning methods, character and pattern recognition, traffic control systems of road vehicles, etc., can solve the problems of poor HMM classification ability, limited vehicle driving characteristics, and high HMM false recognition rate, reaching Improved accuracy, high feasibility and convenience, high real-time effects

Active Publication Date: 2018-08-31
JIANGSU UNIV
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Problems solved by technology

[0005] In terms of vehicle behavior recognition modeling, traditional methods generally use HMM, that is, hidden Markov model. Although in terms of model establishment, HMM can well meet the requirements of vehicle behavior modeling for sequence models, but the classification ability of HMM is relatively low At the same time, the observation sequences used as model input can cover very limited vehicle driving characteristics, so the misrecognition rate of HMM is still high

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  • Surrounding vehicle behavior recognition method based on smartphone and RNN
  • Surrounding vehicle behavior recognition method based on smartphone and RNN
  • Surrounding vehicle behavior recognition method based on smartphone and RNN

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[0041] The present invention will be described in detail below in conjunction with the accompanying drawings and specific embodiments. This embodiment is implemented on the premise of the technical solution of the present invention. Given the detailed real-time mode and specific operation process, the scope of protection of the present invention is not limited to the following embodiments.

[0042] It is set that all individual vehicles participating in vehicle behavior recognition should place their smartphones in specific positions. Smartphones have the function of collecting various data required. Smartphones can form information exchange, inform each other of vehicle identities and exchange data. ;Each vehicle can be used as the tracked vehicle or as the main vehicle; once the main vehicle is set, the adjacent vehicles around the vehicle are set as the tracked target vehicles; Close, set the maximum communication distance to 250m.

[0043] Such as figure 1 As shown, a ...

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Abstract

The invention discloses a surrounding vehicle behavior recognition method based on a smartphone and RNN, and belongs to the field of intelligent drive. The method comprises the steps of a, an offlinetraining link, wherein typical surrounding vehicle behaviors are concluded and divided, vector encoding is carried out on relative characteristics and vehicle behaviors of a tracked vehicle and vehicle owner by using vehicle driving data collected by the smartphone, and the relative characteristics and vehicle behaviors of the tracked vehicle and vehicle owner serve as a training set of RNN parameter learning; b, an online testing line, wherein based on a real-time traffic scene, a main vehicle combines the driving data of the tracked vehicle with the driving data of an own vehicle through 4Gcommunication to form a new characteristic matrix as the input of the trained RNN to recognize a behavior mode which surrounding vehicles belong to. According to the surrounding vehicle behavior recognition method based on the smartphone and RNN, the smartphone is taken as hardware of data collection and vehicle communication and has the advantages of feasibility and convenience; the characteristic of the RNN good at processing multi-dimensional matrix operation are used, the relative characteristics of the own vehicle and surrounding vehicles are enriched, the recognition rate is improved, and it is ensured that the behavior recognition has higher real-time performance.

Description

technical field [0001] The invention belongs to the field of vehicle intelligent driving, and in particular relates to a surrounding vehicle behavior recognition method based on a smart phone and RNN. Background technique [0002] In recent years, vehicle behavior recognition is shifting from fixed location monitoring system vehicle behavior recognition to dynamic surrounding vehicle behavior recognition based on driving vehicles. The key to behavior recognition is to learn the behavior pattern of the vehicle, establish a behavior recognition model, and then perform vehicle behavior recognition through the trained vehicle behavior recognition model, and even predict vehicle behavior. [0003] In order to provide a training set for the surrounding vehicle behavior recognition model, it is first necessary to use smartphone sensors to collect vehicle driving status information, and establish a vehicle-to-vehicle communication group through the 4G network. At present, there are...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G08G1/0967G06K9/62H04M1/725
CPCG08G1/096791G06N3/08H04M1/72457H04M1/72403G06N3/044G06N3/045G06F18/24147
Inventor 蔡英凤朱南楠张云顺孙晓强陈龙梁军王海储小军何友国
Owner JIANGSU UNIV
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