自主无人机竞赛中基于cnn的门检测盲点克服

J. Cocoma-Ortega, L. Rojas-Perez, A. Cabrera-Ponce, J. Martínez-Carranza
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引用次数: 5

摘要

近年来,由于开发自主导航算法所涉及的问题,自主无人机竞赛已成为一个重大挑战。其中一个主要问题是相机姿态的估计;可以建立几种方法来实现相机姿态的估计。特别是,可以根据特定的目标检测来估计位置。然而,在导航的同时进行目标检测,在相机离目标最近的时候会出现盲点问题。本文提出了一种基于CNN门检测的自主导航盲点估计方法,利用随机距离估计算法进行姿态估计。我们实现了95%以上的门检测,在盲点区域的一维姿态估计中平均误差约为35 cm。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Overcoming the Blind Spot in CNN-based Gate Detection for Autonomous Drone Racing
In recent years Autonomous Drone Racing has become a significant challenge due to the problems involved in developing an algorithm for autonomous navigation. One of the major problems is the estimation of the camera pose; several approaches can be founded to achieve the estimation of the camera pose. In particular, it is possible to estimates the position based on specific object detection. However, object detection at the same time of navigation entails the problem of a blind spot area when the camera is closest to the object. We propose a methodology that overcomes the blind spot in autonomous navigation based on CNN gate detection to perform pose estimation with a stochastic algorithm for distance estimation. We achieve over 95 % in gate detection and a mean error of around 35 cm in 1D pose estimation into the blind spot zone.
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