Abstract

Detection and distance estimation of micro unmanned aerial vehicles (mUAVs) is crucial for (i) the detection of intruder mUAVs in protected environments; (ii) sense and avoid purposes on mUAVs or on other aerial vehicles and (iii) multi-mUAV control scenarios, such as environmental monitoring, surveillance and exploration. In this article, we evaluate vision algorithms as alternatives for detection and distance estimation of mUAVs, since other sensing modalities entail certain limitations on the environment or on the distance. For this purpose, we test Haar-like features, histogram of gradients (HOG) and local binary patterns (LBP) using cascades of boosted classifiers. Cascaded boosted classifiers allow fast processing by performing detection tests at multiple stages, where only candidates passing earlier simple stages are processed at the preceding more complex stages. We also integrate a distance estimation method with our system utilizing geometric cues with support vector regressors. We evaluated each method on indoor and outdoor videos that are collected in a systematic way and also on videos having motion blur. Our experiments show that, using boosted cascaded classifiers with LBP, near real-time detection and distance estimation of mUAVs are possible in about 60 ms indoors ( resolution) and 150 ms outdoors ( resolution) per frame, with a detection rate of F-score. However, the cascaded classifiers using Haar-like features lead to better distance estimation since they can position the bounding boxes on mUAVs more accurately. On the other hand, our time analysis yields that the cascaded classifiers using HOG train and run faster than the other algorithms.

Highlights

  • Advances in the development of micro unmanned aerial vehicles, which are UAVs less than kg [1], have led to the availability of highly capable, yet inexpensive flying platforms

  • C-local binary patterns (LBP) is remarkable among the three methods, since its detection and distance estimation performance is very high and close to that of

  • We have studied whether an micro unmanned aerial vehicles (mUAVs) can be detected and its distance can be estimated with a camera through cascaded classifiers using different feature types

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Summary

Introduction

Advances in the development of micro unmanned aerial vehicles (mUAVs), which are UAVs less than kg [1], have led to the availability of highly capable, yet inexpensive flying platforms. The widespread interest in the public has resulted in mUAVs, which are often referred to as drones, showing up in places, such as the White House, where conventional security measures are caught unprepared [4] or in traffic accidents or in fires where the presence of mUAVs, flown by hobbyists to observe the scene, posed a danger to police and fire-fighter helicopters and resulted in delays in their deployment [5] In all of these cases, the need for the automatic detection and distance estimation of mUAVs, either from the ground or from a flying platform (which can be another mUAV or a helicopter) against a possibly cluttered background is apparent. Using this motion blur model, we generated blurred versions of all indoor test videos for five different values of σ, namely, 5, 10, 15, 20 and 25

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