Visual-based vehicle detection has been studied extensively, however there are great challenges in certain settings. To solve this problem, this paper proposes a probabilistic framework combining a scene model with a pattern recognition method for vehicle detection by a stationary camera. A semisupervised viewpoint inference method is proposed in which five viewpoints are defined. For a specific monitoring scene, the vehicle motion pattern corresponding to road structures is obtained by using trajectory clustering through an offline procedure. Then, the possible vehicle location and the probability distribution around the viewpoint in a fixed location are calculated. For each viewpoint, the vehicle model described by a deformable part model...
Abstract: This paper proposes and validates a real-time onroad vehicle detection system, which uses ...
A crucial step in designing intelligent transport systems (ITS) is vehicle detection. The challenges...
An investigation into detection and classification of vehicles and pedestrians from video in urban t...
Visual-based approaches have been extensively studied for on-road vehicle detection; however, it fac...
Abstract—In this paper, we introduce vehicle detection by in-dependent parts (VDIP) for urban driver...
This dissertation seeks to enable intelligent vehicles to see, to infer context, and to understand t...
Computer-vision methods have recently been extensively used in intelligent transportation systems fo...
The work presented in this dissertation provides a framework for object detection,tracking and vehic...
This paper presents a state-of-the-art, vision-based vehicle detection and type classification to pe...
This paper presents a vehicle detection and classification system for urban traffic scenes. This aim...
This paper presents recent developments to a vision-based traffic surveillance system which relies e...
This study develops a statistical approach to the automatic detection of vehicles. Compared to tradi...
In this work an object class recognition method is presented. The method uses local image features a...
Vehicle detection and tracking in road traffic surveillance is a classical task in computer vision a...
This paper presents algorithms for vision-based detection and classification of vehicles in monocula...
Abstract: This paper proposes and validates a real-time onroad vehicle detection system, which uses ...
A crucial step in designing intelligent transport systems (ITS) is vehicle detection. The challenges...
An investigation into detection and classification of vehicles and pedestrians from video in urban t...
Visual-based approaches have been extensively studied for on-road vehicle detection; however, it fac...
Abstract—In this paper, we introduce vehicle detection by in-dependent parts (VDIP) for urban driver...
This dissertation seeks to enable intelligent vehicles to see, to infer context, and to understand t...
Computer-vision methods have recently been extensively used in intelligent transportation systems fo...
The work presented in this dissertation provides a framework for object detection,tracking and vehic...
This paper presents a state-of-the-art, vision-based vehicle detection and type classification to pe...
This paper presents a vehicle detection and classification system for urban traffic scenes. This aim...
This paper presents recent developments to a vision-based traffic surveillance system which relies e...
This study develops a statistical approach to the automatic detection of vehicles. Compared to tradi...
In this work an object class recognition method is presented. The method uses local image features a...
Vehicle detection and tracking in road traffic surveillance is a classical task in computer vision a...
This paper presents algorithms for vision-based detection and classification of vehicles in monocula...
Abstract: This paper proposes and validates a real-time onroad vehicle detection system, which uses ...
A crucial step in designing intelligent transport systems (ITS) is vehicle detection. The challenges...
An investigation into detection and classification of vehicles and pedestrians from video in urban t...