This study presents a boosted vehicle detection system. It first hypothesizes potential locations of vehicles to reduce the computational costs by a statistic of the edge intensity and symmetry, then verifies the accuracy of the hypotheses using AdaBoost and Probabilistic Decision-Based Neural Network (PDBNN) classifiers, which exploit local and global features of vehicles, respectively. The combination of 2 classifiers can be used to learn the complementary relationship between local and global features, and it gains an extremely low false positive rate while maintaining a high detection rate. For the MIT Center for Biological & Computational Learning (CBCL) database, a 96.3% detection rate leads to a false alarm rate of approximately 0.00...
Airborne camera can provide optical images covering a large area at low cost. The collection of traf...
In this paper, we address the problem of detecting and localizing cars in still images. The proposed...
It is important to know the road traffic density real time especially in cities for signal control a...
This paper explores the vehicle detection problem and introduces an improved regional convolution ne...
This study develops a statistical approach to the automatic detection of vehicles. Compared to tradi...
Abstract — Vehicle detection in traffic scenes is a fundamental task for intelligent transportation ...
We present in this paper a high detection rate of Boosted vehicle detection. The positive database o...
AbstractIn this document, a vehicle detection system is presented. This system is based on two algor...
Robust vehicle detection is a challenging task given vehicles with different types, and sizes, and a...
Accurate vehicle detection or classification plays an important role for self-driving cars. Objects ...
This paper describes the comparison of accuracy and performance of two machine learning approaches f...
Vehicle recognition techniques are used for recognition of vehicles and to alert driver from dangero...
We present an automatic vehicle detection system for aerial surveillance in this paper. In this syst...
License plate (LP) detection is the most imperative part of an automatic LP recognition (LPR) system...
Vehicle detection in Intelligent Transportation Systems (ITS) is a key factor ensuring road safety, ...
Airborne camera can provide optical images covering a large area at low cost. The collection of traf...
In this paper, we address the problem of detecting and localizing cars in still images. The proposed...
It is important to know the road traffic density real time especially in cities for signal control a...
This paper explores the vehicle detection problem and introduces an improved regional convolution ne...
This study develops a statistical approach to the automatic detection of vehicles. Compared to tradi...
Abstract — Vehicle detection in traffic scenes is a fundamental task for intelligent transportation ...
We present in this paper a high detection rate of Boosted vehicle detection. The positive database o...
AbstractIn this document, a vehicle detection system is presented. This system is based on two algor...
Robust vehicle detection is a challenging task given vehicles with different types, and sizes, and a...
Accurate vehicle detection or classification plays an important role for self-driving cars. Objects ...
This paper describes the comparison of accuracy and performance of two machine learning approaches f...
Vehicle recognition techniques are used for recognition of vehicles and to alert driver from dangero...
We present an automatic vehicle detection system for aerial surveillance in this paper. In this syst...
License plate (LP) detection is the most imperative part of an automatic LP recognition (LPR) system...
Vehicle detection in Intelligent Transportation Systems (ITS) is a key factor ensuring road safety, ...
Airborne camera can provide optical images covering a large area at low cost. The collection of traf...
In this paper, we address the problem of detecting and localizing cars in still images. The proposed...
It is important to know the road traffic density real time especially in cities for signal control a...