Real Time Pedestrian and Object Detection and Tracking-based Deep Learning. Application to Drone Visual Tracking

R. Khemmar, M. Gouveia, B. Decoux, J. Ertaud
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引用次数: 6

Abstract

This work aims to show the new approaches in embedded vision dedicated to object detection and tracking for drone visual control. Object/Pedestrian detection has been carried out through two methods: 1. Classical image processing approach through improved Histogram Oriented Gradient (HOG) and Deformable Part Model (DPM) based detection and pattern recognition methods. In this step, we present our improved HOG/DPM approach allowing the detection of a target object in real time. The developed approach allows us not only to detect the object (pedestrian) but also to estimates the distance between the target and the drone. 2. Object/Pedestrian detection-based Deep Learning approach. The target position estimation has been carried out within image analysis. After this, the system sends instruction to the drone engine in order to correct its position and to track target. For this visual servoing, we have applied our improved HOG approach and implemented two kinds of PID controllers. The platform has been validated under different scenarios by comparing measured data to ground truth data given by the drone GPS. Several tests which were ca1rried out at ESIGELEC car park and Rouen city center validate the developed platform.
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基于深度学习的实时行人和目标检测与跟踪。无人机视觉跟踪的应用
本工作旨在展示嵌入式视觉中用于无人机视觉控制的目标检测和跟踪的新方法。目标/行人检测主要通过两种方法进行:经典图像处理方法通过改进的直方图定向梯度(HOG)和可变形部件模型(DPM)为基础的检测和模式识别方法。在这一步中,我们提出了改进的HOG/DPM方法,允许实时检测目标物体。该方法不仅可以检测目标(行人),还可以估计目标与无人机之间的距离。2. 基于对象/行人检测的深度学习方法。在图像分析中进行了目标位置估计。在此之后,系统向无人机引擎发送指令,以纠正其位置并跟踪目标。对于这种视觉伺服,我们采用了改进的HOG方法,并实现了两种PID控制器。通过将实测数据与无人机GPS给出的地面真实数据进行比较,验证了该平台在不同场景下的有效性。在ESIGELEC停车场和鲁昂市中心进行了几次测试,验证了开发的平台。
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