Abstract

The study represents a novel approach taken towards car detection, feature extraction and classification in a video. Though many methods have been proposed to deal with individual features of a vehicle, like edge, license plate, corners, no system has been implemented to combine features. Combination of four unique features, namely, color, shape, number plate and logo gives the application a stronghold on various applications like surveillance recording to detect accident percentage(for every make of a company), authentication of a car in the Parliament(for high security), learning system(readily available knowledge for automobile tyro enthusiasts) with increased accuracy of matching. Video surveillance is a security solution for government buildings, facilities and operations. Installing this system can enhance existing security systems or help start a comprehensive security solution that can keep the building, employees and records safe. The system uses a Haar cascaded classifier to detect a car in a video and implements an efficient algorithm to extract the color of it along with the confidence rating. An gadabouts trained classifier is used to detect the logo (Suzuki/Toyota/Hyunadai) of the car whose accuracy is enhanced by implementing SURF matching. A combination of blobs and contour tracing is applied for shape detection and model classification while number plate detection is performed in a smart and efficient algorithm which uses morphological operations and contour tracing. Finally, a trained, single perceptron neural network model is integrated with the system for identifying the make of the car. A thorough work on the system has proved it to be efficient and accurate, under different illumination conditions, when tested with a huge dataset which has been collected over a period of six months.

Highlights

  • In real time traffic there are different objects of interest

  • Average detection time, confidence percentage per frame, Average confidence percentage, error percentage, No of SURF matches with each logo template, percentage of frames with number plate detected Step 2: Obtained the feature vector < Color, number plate status, logo, shape template, % shape error> Step 3: Collected training samples for NN

  • The proposed approach has been tested on datasets that have been shot using a PowerShot SX110 IS Canon camera with 9.0 Mega Pixels and 10X Optical Zoom lens (10X IS)

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Summary

More stable than AdaBoost

2. Since normalization is Supervised learning) Incorporated directly in the weights of the input network preprocessing is not required. Classification of objects in scientific /research areas. The logo detection results are better than the files. Step 3: Logo detection using xml files. Shape extraction: XML files (which comprises of coordinate values.) Step 1: Detection of the largest blob in the templates of Suzuki, Hyundai and Toyota obtained as a result of Step 2: Draw contour around the largest blob detected classification is used to draw the ROI around the respective logos. Step 4: Perform contour matching with test and template data.

MATERIALS AND METHODS
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