Vehicle type recognition algorithms are broadly used in intelligent transportation, but the accuracy of the algorithms cannot meet the requirements of production application. For the high efficiency of the multilayer perceptive layer of Network in Network (NIN), the nonlinear features of local receptive field images can be extracted. Global average pooling (GAP) can avoid the network from overfitting, and small convolution kernel can decrease the dimensionality of the feature map, as well as downregulate the number of model training parameters. On that basis, the residual error is adopted to build a novel NIN model by altering the size and layout of the original convolution kernel of NIN. The feasibility of the algorithm is verified based o...
In this paper, a vehicle type classification approach is proposed by using an enhanced feature extra...
Traffic violations can lead to traffic congestion or even collisions. However, Indonesia’s traffic f...
Object detection using deep learning over the years became one of the most popular methods for imple...
Vehicle make and model recognition is an important component of the Intelligent Transport System (IT...
International audienceAutomatic classification of vehicles on infra-red images is a hard image proce...
This thesis focuses on training convolutional neural network for vehicle recognition in image, prepa...
It has become a challenging research topic to accurately identify the vehicles in the past from the ...
\u3cp\u3eWe describe a system for vehicle make and model recognition (MMR) that automatically detect...
This paper represents a framework for multi-class vehicle type identification based on several geome...
We propose a system for vehicle Make and Model Recognition (MMR) that automatically detects and clas...
This paper presents a neural network based approach for vehicle classification. The proposed vehicle...
Vehicle analysis involves license-plate recognition (LPR), vehicle-type classification (VTC), and ve...
Vehicle model recognition plays a crucial role in intelligent transportation systems. Most of the ex...
At present, the automatic classification of vehicles on roads is mostly based on image recognition, ...
Abstract. This paper presents a framework for multiclass vehicle type (Make and Model) identificatio...
In this paper, a vehicle type classification approach is proposed by using an enhanced feature extra...
Traffic violations can lead to traffic congestion or even collisions. However, Indonesia’s traffic f...
Object detection using deep learning over the years became one of the most popular methods for imple...
Vehicle make and model recognition is an important component of the Intelligent Transport System (IT...
International audienceAutomatic classification of vehicles on infra-red images is a hard image proce...
This thesis focuses on training convolutional neural network for vehicle recognition in image, prepa...
It has become a challenging research topic to accurately identify the vehicles in the past from the ...
\u3cp\u3eWe describe a system for vehicle make and model recognition (MMR) that automatically detect...
This paper represents a framework for multi-class vehicle type identification based on several geome...
We propose a system for vehicle Make and Model Recognition (MMR) that automatically detects and clas...
This paper presents a neural network based approach for vehicle classification. The proposed vehicle...
Vehicle analysis involves license-plate recognition (LPR), vehicle-type classification (VTC), and ve...
Vehicle model recognition plays a crucial role in intelligent transportation systems. Most of the ex...
At present, the automatic classification of vehicles on roads is mostly based on image recognition, ...
Abstract. This paper presents a framework for multiclass vehicle type (Make and Model) identificatio...
In this paper, a vehicle type classification approach is proposed by using an enhanced feature extra...
Traffic violations can lead to traffic congestion or even collisions. However, Indonesia’s traffic f...
Object detection using deep learning over the years became one of the most popular methods for imple...