At present, the automatic classification of vehicles on roads is mostly based on image recognition, and there are defects in adaptability under non-line-of-sight environments. In this paper, based on the similarity of the integration of the ecosystem model and multi-neural network model, an artificial neural network group (BNNG) algorithm was proposed. The vehicle’s driving acoustic signal was taken as the research object, and it was calculated using the Artificial Neural Network (BNNG) algorithm to achieve automatic classification and recognition of vehicle models. Through experimental tests, it is shown that under non-line-of-sight environments, the accuracy of vehicle classification can be improved, and the misrecognition rate of similar...
This paper attempts to explore the possibility of using sound signatures for vehicle detection and c...
The vehicle detection on roads becomes an important task when it comes to the urban surveillance and...
The time drivers spend stuck in traffic is increasing annually, on a global level. Time lost in traf...
Object detection using deep learning over the years became one of the most popular methods for imple...
This paper presents a neural network based approach for vehicle classification. The proposed vehicle...
International audienceAutomatic classification of vehicles on infra-red images is a hard image proce...
ABSTRACT Nowadays, number of vehicles has been increased and traditional systems of traffic control...
Pervasive smart computing environments make people get accustomed to convenient and secure services....
AbstractDifferentially Hearing Ability Enabled (DHAE) community cannot discriminate the sound inform...
This paper represents a framework for multi-class vehicle type identification based on several geome...
The automotive industry is expanding its efforts to develop new techniques for increasing the level ...
This thesis report is submitted in partial fulfillment of the requirements for the degree of Bachelo...
The paper presents the research of the sophisticated vehiclerecognition and count system based on th...
Vehicle type recognition algorithms are broadly used in intelligent transportation, but the accuracy...
This research proposes a method in order to classify vehicles in a highly congested roads , a robust...
This paper attempts to explore the possibility of using sound signatures for vehicle detection and c...
The vehicle detection on roads becomes an important task when it comes to the urban surveillance and...
The time drivers spend stuck in traffic is increasing annually, on a global level. Time lost in traf...
Object detection using deep learning over the years became one of the most popular methods for imple...
This paper presents a neural network based approach for vehicle classification. The proposed vehicle...
International audienceAutomatic classification of vehicles on infra-red images is a hard image proce...
ABSTRACT Nowadays, number of vehicles has been increased and traditional systems of traffic control...
Pervasive smart computing environments make people get accustomed to convenient and secure services....
AbstractDifferentially Hearing Ability Enabled (DHAE) community cannot discriminate the sound inform...
This paper represents a framework for multi-class vehicle type identification based on several geome...
The automotive industry is expanding its efforts to develop new techniques for increasing the level ...
This thesis report is submitted in partial fulfillment of the requirements for the degree of Bachelo...
The paper presents the research of the sophisticated vehiclerecognition and count system based on th...
Vehicle type recognition algorithms are broadly used in intelligent transportation, but the accuracy...
This research proposes a method in order to classify vehicles in a highly congested roads , a robust...
This paper attempts to explore the possibility of using sound signatures for vehicle detection and c...
The vehicle detection on roads becomes an important task when it comes to the urban surveillance and...
The time drivers spend stuck in traffic is increasing annually, on a global level. Time lost in traf...