Abstract

In recent years, object detection and classification has gained so much popularity in different application areas like face detection, self- driving cars, pedestrian detection, security surveillance systems etc. The traditional detection methods like background subtraction, Gaussian Mixture Model (GMM), Support Vector Machine (SVM) have certain drawbacks like overlapping of objects, distortion due to smoke, fog, lightening conditions etc. In this paper, thermal images are used as thermal cameras capture the image by using the heat generated by the objects. Thermal camera images are not influenced by smoke and bad weather conditions which makes them a built-up apparatus in inquiry and safeguards or fire-fighting applications. These days, deep learning techniques are extensively used for detection and classification. In this paper, a comparative analysis has been done by applying Faster region based convolutional neural network on thermal images and visual spectrum images. The experimental results show that thermal camera images are better as compared to visible spectrum images.

Highlights

  • In computer vision, the process of scanning and searching for an object in an image or a video is known as detection of objects

  • The dataset contains the 1000 visible spectrum images and 1000 thermal images which is divided into two parts i.e. for training 800 images and for testing 200 images respectively

  • The tool requires minimum scene related information for detecting tracking and classifying vehicles. It achieved the classification accuracy of 96.26% for Support Vector Machine (SVM) which was much better as compared to the random forest

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Summary

Introduction

The process of scanning and searching for an object in an image or a video is known as detection of objects. People can recognize and distinguish objects present in a picture. Assigning labels with image classification models can end up being complicated and questionable. In an individual picture numerous significant objects can be recognized by utilizing various models of object detection. Another significance of object detection is that the localization of the objects is given as compared to image classification. Kalman filter and SVM was used for classification. HOG based Vehicle Detection technique was used. For the tracking of short-term single-objects by utilizing thermal images

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