ARTICLE
TITLE

Vehicle Detection and Tracking at Night in Video Surveillance

SUMMARY

This Many detection and tracking methods are able to detect and track vehicle motion reliably in the daytime. However, vehicle detection and tracking in video surveillance at night remain very important problems that the vehicle signatures have low contrast against the background. Traditional methods based on the analysis of the difference between successive frames and a background frame can not work. This paper presents a method for vehicle detection and tracking at night in video surveillance. The method uses Histograms of Oriented Gradients (HOG) features to extract features, and then uses Support Vector Machine (SVM) to recognize the object. In tracking phase, we use Kalman filter to track the object. As shown in experiments, the algorithm can exactly detect and track moving vehicles in video surveillance at night.

 Articles related

Mohamed Adel Al-Shaher    

In this paper, we focus on detection and recognition of vehicles from a video stream. Contrasted with conventional techniques for article identification and arrangement, Machine learning strategies are another idea in the field of PC vision. Our model wo... see more


Salah Aliesawi,Mohammed Ahmed,Ahmed Rashid    

Wireless access in vehicular environments (WAVE), is especially designed to support vehicular ad hoc networks (VANETs) requirements, where rapidly changing channel conditions introduces unsynchronized transmissions. In such networks, instead of dealing w... see more


Le Shang,Qiuyue Wang,Kanglong Chen,Jing Qu,Juan Lin,Jian-bin Luo,Qinghan Zhou    

A novel polydopamine based redox-sensitive magnetic nanoparticles assembled with superparamagnetic iron oxide nanoparticles (SPIONs) were prepared for the biomedical application to deliver doxorubicin (DOX) for cancer therapy and magnetic resonance imagi... see more


Faisal Riaz,Abdul Ghafoor,Yasir Mehmood,Naeem Ratyal,Iram Zamir,Ujala Siddique,Hina Iqbal,Anila Arbab    

Distracted driving is a growing problem that leads to many deaths in the world. Causes of distraction are speeding, eating, texting, drinking, answering phone calls, reading billboards, adjusting vehicle equipment, and attending to passengers. These deat... see more


Salvatore F. DI GENNARO,Enrico BATTISTON,Stefano DI MARCO,Osvaldo FACINI,Alessandro MATESE,Marco NOCENTINI,Alberto PALLIOTTI,Laura MUGNAI    

Foliar symptoms of grapevine leaf stripe disease (GLSD, a disease within the esca complex) are linked to drastic alteration of photosynthetic function and activation of defense responses in affected grapevines several days before the appearance of the fi... see more