Pedestrian detection through Computer Vision is a building block for a multitude of applications. Recently, there has been an increasing interest in convolutional neural network-based architectures to execute such a task. One of these supervised networks’ critical goals is to generalize the knowledge learned during the training phase to new scenarios with different characteristics. A suitably labeled dataset is essential to achieve this purpose. The main problem is that manually annotating a dataset usually requires a lot of human effort, and it is costly. To this end, we introduce ViPeD (Virtual Pedestrian Dataset), a new synthetically generated set of images collected with the highly photo-realistic graphical engine of the video game GTA ...
Recently, as autonomous cars are developing very fast, it is the most crucial task to detect pedestr...
Pedestrian detection is at the core of autonomous road vehicle navigation systems as they allow a ve...
Pedestrian detection has always been a challenging task of computer vision research for many decades...
Pedestrian detection through Computer Vision is a building block for a multitude of applications. Re...
In this paper, we present a real-time pedestrian detection system that has been trained using a virt...
Pedestrian detection is an essential step in many important applications of Computer Vision. Most de...
Neural Networks are an effective technique in the field of Artificial Intelligence and in the field ...
We consider scenarios where we have zero instances of real pedestrian data (e.g., a newly installed ...
Detecting pedestrians is a challenging and widely explored problem in computer vision. Many approach...
We present a new method for training pedestrian detectors on an unannotated set of images. We produ...
Successful detection and localisation of pedestrians is an important goal in computer vision which i...
Visual object detection has seen substantial improvements during the last years due to the possibili...
In recent years significant progress has been made learn-ing generic pedestrian detectors from manua...
The purpose of this investigation was to devise an efficient and accurate algorithm that is capable ...
Object detection exists in many countries around the world after a recent growing interest for auton...
Recently, as autonomous cars are developing very fast, it is the most crucial task to detect pedestr...
Pedestrian detection is at the core of autonomous road vehicle navigation systems as they allow a ve...
Pedestrian detection has always been a challenging task of computer vision research for many decades...
Pedestrian detection through Computer Vision is a building block for a multitude of applications. Re...
In this paper, we present a real-time pedestrian detection system that has been trained using a virt...
Pedestrian detection is an essential step in many important applications of Computer Vision. Most de...
Neural Networks are an effective technique in the field of Artificial Intelligence and in the field ...
We consider scenarios where we have zero instances of real pedestrian data (e.g., a newly installed ...
Detecting pedestrians is a challenging and widely explored problem in computer vision. Many approach...
We present a new method for training pedestrian detectors on an unannotated set of images. We produ...
Successful detection and localisation of pedestrians is an important goal in computer vision which i...
Visual object detection has seen substantial improvements during the last years due to the possibili...
In recent years significant progress has been made learn-ing generic pedestrian detectors from manua...
The purpose of this investigation was to devise an efficient and accurate algorithm that is capable ...
Object detection exists in many countries around the world after a recent growing interest for auton...
Recently, as autonomous cars are developing very fast, it is the most crucial task to detect pedestr...
Pedestrian detection is at the core of autonomous road vehicle navigation systems as they allow a ve...
Pedestrian detection has always been a challenging task of computer vision research for many decades...