Object recognition and pedestrian detection are of crucial importance to autonomous driving applications. Deep learning based methods have exhibited very large improvements in accuracy and fast decision in real time applications thanks to CUDA support. In this paper, we propose two Convolutions Neural Networks (CNNs) architectures with different layers. We extract the features obtained from the proposed CNN, CNN in AlexNet architecture, and Bag of visual Words (BOW) approach by using SURF, HOG and k-means. We use linear SVM classifiers for training the features. In the experiments, we carried out object recognition and pedestrian detection tasks using the benchmark the Caltech 101 and the Caltech Pedestrian Detection datasets
Compared with other applications in computer vision, convolutional neural networks (CNNs) have under...
Pedestrian movement direction recognition is an important factor in autonomous driver assistance and...
The investigation of a deep neural network for pedestrian classification using transfer learning met...
Object recognition and pedestrian detection are of crucial importance to autonomous driving applicat...
Pedestrian detection is at the core of autonomous road vehicle navigation systems as they allow a ve...
Object detection using deep learning over the years became one of the most popular methods for imple...
Pedestrian detection is a popular research topic due to its paramount importance for a number of app...
In recent years, Deep Learning has emerged showing outstanding results for many different problems r...
This paper is to present an efficient and fast deep learning algorithm based on neural networks for ...
In order to avoid collision with other traffic participants automated driving vehicles need to under...
Object detection is a critical problem for advanced driving assistance systems (ADAS). Recently conv...
MasterThis thesis presents a fast method to train CNN classifiers through extreme learning and its c...
Pedestrian detection is a rapidly growing field of computer vision with applications in smart cars, ...
Object detection exists in many countries around the world after a recent growing interest for auton...
Compared with other applications in computer vision, convolutional neural networks (CNNs) have under...
Pedestrian movement direction recognition is an important factor in autonomous driver assistance and...
The investigation of a deep neural network for pedestrian classification using transfer learning met...
Object recognition and pedestrian detection are of crucial importance to autonomous driving applicat...
Pedestrian detection is at the core of autonomous road vehicle navigation systems as they allow a ve...
Object detection using deep learning over the years became one of the most popular methods for imple...
Pedestrian detection is a popular research topic due to its paramount importance for a number of app...
In recent years, Deep Learning has emerged showing outstanding results for many different problems r...
This paper is to present an efficient and fast deep learning algorithm based on neural networks for ...
In order to avoid collision with other traffic participants automated driving vehicles need to under...
Object detection is a critical problem for advanced driving assistance systems (ADAS). Recently conv...
MasterThis thesis presents a fast method to train CNN classifiers through extreme learning and its c...
Pedestrian detection is a rapidly growing field of computer vision with applications in smart cars, ...
Object detection exists in many countries around the world after a recent growing interest for auton...
Compared with other applications in computer vision, convolutional neural networks (CNNs) have under...
Pedestrian movement direction recognition is an important factor in autonomous driver assistance and...
The investigation of a deep neural network for pedestrian classification using transfer learning met...