In recent years, there has been a significant improvement in the detection, identification and classification of objects and images using Convolutional Neural Networks. To study the potential of the Convolutional Neural Network, in this paper three approaches are investigated to train classifiers based on Convolutional Neural Networks. These approaches allow Convolutional Neural Networks to be trained on datasets containing only a few hundred training samples, which results in a successful classification. Two of these approaches are based on the concept of transfer learning. In the first approach features, created by a pretrained Convolutional Neural Network, are used for a classification using a support vector machine. In the second approa...
The object of research is the ability to combine a previously trained model of a deep neural network...
International audienceAs computer vision before, remote sensing has been radically changed by the in...
The object of research is the ability to combine a previously trained model of a deep neural network...
As autonomous vehicles are poised to enter the mainstream in the automobile industry, an important r...
In this paper, we are presenting a proof of concept of our system for training of the YOLOv3 neural ...
Pedestrian detection is at the core of autonomous road vehicle navigation systems as they allow a ve...
Convolutional neural networks, or CNNs, raised the bar for most computer vision problems and have an...
When classifying objects in 3D LiDAR data, it is important to use efficient collection methods and p...
Tato bakalářkská práce se zabývá návrhem konvolučních neuronových sítí pro segmentaci dat z LiDARu S...
To understand driving environments effectively, it is important to achieve accurate detection and cl...
© 2018 Australasian Robotics and Automation Association. All rights reserved. In this paper we intro...
In recent years, convolutional neural networks have shown great success in various computer vision t...
A major challenge in the application of state-of-the-art deep learning methods to the classification...
A comparison of performance between tradition support vector machine (SVM), single kernel, multiple ...
SAR sensors play an important role in different fields of remote sensing. One of these is Automatic ...
The object of research is the ability to combine a previously trained model of a deep neural network...
International audienceAs computer vision before, remote sensing has been radically changed by the in...
The object of research is the ability to combine a previously trained model of a deep neural network...
As autonomous vehicles are poised to enter the mainstream in the automobile industry, an important r...
In this paper, we are presenting a proof of concept of our system for training of the YOLOv3 neural ...
Pedestrian detection is at the core of autonomous road vehicle navigation systems as they allow a ve...
Convolutional neural networks, or CNNs, raised the bar for most computer vision problems and have an...
When classifying objects in 3D LiDAR data, it is important to use efficient collection methods and p...
Tato bakalářkská práce se zabývá návrhem konvolučních neuronových sítí pro segmentaci dat z LiDARu S...
To understand driving environments effectively, it is important to achieve accurate detection and cl...
© 2018 Australasian Robotics and Automation Association. All rights reserved. In this paper we intro...
In recent years, convolutional neural networks have shown great success in various computer vision t...
A major challenge in the application of state-of-the-art deep learning methods to the classification...
A comparison of performance between tradition support vector machine (SVM), single kernel, multiple ...
SAR sensors play an important role in different fields of remote sensing. One of these is Automatic ...
The object of research is the ability to combine a previously trained model of a deep neural network...
International audienceAs computer vision before, remote sensing has been radically changed by the in...
The object of research is the ability to combine a previously trained model of a deep neural network...