Object counting is an active research area that gained more attention in the past few years. In smart cities, vehicle counting plays a crucial role in urban planning and management of the Intelligent Transportation Systems (ITS). Several approaches have been proposed in the literature to address this problem. However, the resulting detection accuracy is still not adequate. This paper proposes an efficient approach that uses deep learning concepts and correlation filters for multi-object counting and tracking. The performance of the proposed system is evaluated using a dataset consisting of 16 videos with different features to examine the impact of object density, image quality, angle of view, and speed of motion towards system accuracy. Per...
We propose a novel deep framework, TraCount, for highly overlapping vehicle counting in congested tr...
This paper aims to develop a method that can accurately count vehicles from images of parking areas ...
Cities worldwide use camera systems that collect and store large amounts of images, which are used t...
In intelligent transportation systems (ITS), it is essential to obtain reliable statistics of the ve...
Deep Learning is a popular Machine Learning algorithm that is widely used in many areas in current d...
With the world’s urban population drastically increasing during the past decades, the over-crowded c...
The development of machine learning and the prosperity of the convolution neural network has brought...
Standard Multi-Object Tracking (MOT) frameworks are currently categorised into three categories: tra...
The population of the world has been increasing and crowded scenes are more likely to occur, especia...
The recent years have witnessed a considerable rise in the number of vehicles, which has placed tran...
The rapid recent advancements in the computation ability of everyday computers have made it possible...
The counting problem is the estimation of the number of objects instances in still images or video f...
In this thesis, the aim is to examine the viability of Deep Neural Network (DNN) based Multi-Object...
Models for vehicle detection, classification, and counting based on computer vision and artificial i...
International audienceIn this paper, we will introduce our object detection, localization and tracki...
We propose a novel deep framework, TraCount, for highly overlapping vehicle counting in congested tr...
This paper aims to develop a method that can accurately count vehicles from images of parking areas ...
Cities worldwide use camera systems that collect and store large amounts of images, which are used t...
In intelligent transportation systems (ITS), it is essential to obtain reliable statistics of the ve...
Deep Learning is a popular Machine Learning algorithm that is widely used in many areas in current d...
With the world’s urban population drastically increasing during the past decades, the over-crowded c...
The development of machine learning and the prosperity of the convolution neural network has brought...
Standard Multi-Object Tracking (MOT) frameworks are currently categorised into three categories: tra...
The population of the world has been increasing and crowded scenes are more likely to occur, especia...
The recent years have witnessed a considerable rise in the number of vehicles, which has placed tran...
The rapid recent advancements in the computation ability of everyday computers have made it possible...
The counting problem is the estimation of the number of objects instances in still images or video f...
In this thesis, the aim is to examine the viability of Deep Neural Network (DNN) based Multi-Object...
Models for vehicle detection, classification, and counting based on computer vision and artificial i...
International audienceIn this paper, we will introduce our object detection, localization and tracki...
We propose a novel deep framework, TraCount, for highly overlapping vehicle counting in congested tr...
This paper aims to develop a method that can accurately count vehicles from images of parking areas ...
Cities worldwide use camera systems that collect and store large amounts of images, which are used t...