Dynamic vehicle
detection and tracking can provide essential data to solve the problem of road
planning and traffic management. A method for real-time vehicle detection and
tracking using deep neural networks is proposed in this paper and a complete
network architecture is presented. Using our model, you can obtain vehicle
candidates, vehicle probabilities, and their coordinates in real-time. The
proposed model is trained on the PASCAL VOC 2007 and 2012 image set and tested
on ImageNet dataset. By a carefully design, the detection speed of our model is
fast enough to process streaming video. Experimental results show that proposed
model is a real-time, accurate vehicle detector, making it ideal for computer
vision application.
Introduction
In today’s society,
more and more vehicles are taking to the highways every year, which makes a
push to monitor and control the traffic more efficiently. The real-time vehicle
detection and tracing is essential for intelligent road routing, road traffic
control, road planning and so on. Therefore, it is important to know the road
traffic density real time, especially in mega cities for signal control and
effective traffic management. For a long time, several approaches[1,2] in the
literature have been proposed to resolve the problem of various moving
vehicles; Nevertheless, the aim of real-time fully-automatic detection of
vehicle is far from being attained as it needs improvement in detection and
tracking for accurate prediction with faster processing speed. Zheng et al. use
brake lights detection through color segmentation method to generate vehicle
candidates and verify them through a rule-based clustering approach. A
tracking-by-detection scheme based on Harris-SIFT feature matching is then used
to learn the template of the detected vehicle on line, localize and track the
corresponding vehicle in live video [2]. It is a good measure to extract
vehicle areas, however, it needs a relatively ideal background. Wei Wang et al.
have presented a method of multi-vehicle tracking and counting using a fisheye
camera based on simple feature points tracking, grouping and association. They
integrates low level feature-point based tracking and higher level “identity
appearance” and motion based real-time association [1]. However, the average
processing time of it is around 750ms, which is not fast enough to achieve the
real-time processing. System based Convolutional Neural Networks (CNN) can
provide the solution of many contemporary problems in vehicle detection and
tracing. CNN currently outperform other techniques by a large margin in
computer vision problems such as classification [3] and detection [4].
The training procedure of
CNN automatically learn the weights of the filters, so that they are able to
extract visual concepts from raw image content. Using the knowledge obtained
through the analysis of the training set containing labelled vehicle and
non-vehicle examples, vehicle can be identified in given images. In general,
Convolutional Neural Networks show more promising results. In this paper, we
propose a method of real-time vehicles detection and tracking using
Convolutional Neural Networks. We present a network architecture, which create
multiple vehicle candidates and predict vehicle probabilities in one
evaluation. Our architecture uses features from the entire image to create
vehicle candidates. Firstly, we use convolutional layers of the system to
extract features from the raw image. Secondly, we use four kinds of inception
modules. Thirdly, we add Spatial Pyramid Pooling (SPP) layer between
convolutional layers and fully connected layers, which is able to resize any
images into fixed size. Lastly, the fully connected layers predict the
probability and coordinates of vehicles.
https://codeshoppy.com/shop/product/catering-app/
https://codeshoppy.com/shop/product/cruise-ship-management/
https://codeshoppy.com/shop/product/edupad/
https://codeshoppy.com/shop/product/health-diet-online/
https://codeshoppy.com/shop/product/pg-locator-for-searching-pg-hostel-or-rental-houses/
https://codeshoppy.com/shop/product/smarth-health-care/
https://codeshoppy.com/shop/product/cruise-ship-management/
https://codeshoppy.com/shop/product/edupad/
https://codeshoppy.com/shop/product/health-diet-online/
https://codeshoppy.com/shop/product/pg-locator-for-searching-pg-hostel-or-rental-houses/
https://codeshoppy.com/shop/product/smarth-health-care/