Abstract

This paper presents a vision-based drone detection method. There are a number of researches on object detection which includes different feature extraction methods – all of those are used distinctly for the experiments. But in the proposed model, a hybrid feature extraction method using SURF and GLCM is used to detect object by Neural Network which has never been experimented before. Both are very popular ways of feature extraction. Speeded-up Robust Feature (SURF) is a blob detection algorithm which extracts the points of interest from an integral image, thus converts the image into a 2D vector. The Gray-Level Co-Occurrence Matrix (GLCM) calculates the number of occurrences of consecutive pixels in same spatial relationship and represents it in a new vector- 8 × 8 matrix of best possible attributes of an image. SURF is a popular method of feature extraction and fast matching of images, whereas, GLCM method extracts the best attributes of the images. In the proposed model, the images were processed first to fit our feature extraction methods, then the SURF method was implemented to extract the features from those images into a 2D vector. Then for our next step GLCM was implemented which extracted the best possible features out of the previous vector, into a 8 × 8 matrix. Thus, image is processed in to a 2D vector and feature extracted from the combination of both SURF and GLCM methods ensures the quality of the training dataset by not just extracting features faster (with SURF) but also extracting the best of the point of interests (with GLCM). The extracted featured related to the pattern are used in the neural network for training and testing. Pattern recognition algorithm has been used as a machine learning tool for the training and testing of the model. In the experimental evaluation, the performance of proposed model is examined by cross entropy for each instance and percentage error. For the tested drone dataset, experimental results demonstrate improved performance over the state-of-art models by exhibiting less cross entropy and percentage error.

Highlights

  • Drones are, in technical terms, unmanned aircraft

  • In technical terms, unmanned aircraft. These are known as unmanned aerial vehicles, or UAVs

  • Traditional CCTV based security system is in cry of update, image processing can come in handy

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Summary

Introduction

These are known as unmanned aerial vehicles, or UAVs. These are known as unmanned aerial vehicles, or UAVs They are controlled by remote controlling systems, there are some drones that can fly by themselves. Crimes are being sophisticated day by day and this is just one angle of it. It is used for providing unwanted materials to prison [Telegraph, February 16, 2016]. Image processing in the field of object detection is getting momentums, and for good reasons. Techniques of image processing have to be chosen carefully for extracting and analyzing features of the objects. Object detection is one of the major divisions in the field

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