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Visual Target Detection and Tracking Framework Using Deep Convolutional Neural Networks for Micro Aerial Vehicles

机译:深度卷积神经网络的微型飞行器视觉目标检测与跟踪框架

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This paper presents a visual detection and tracking framework which estimates smooth target position for various applications on micro aerial vehicles (MAVs). The proposed framework consists of two major components: a deep learning-based detector and a correlation filter-based tracker. The detector running at a low frequency first detects a target and initializes the tracker. The estimated target position from the tracker will be updated by the detector when the detection confidence is high or the tracking is considered fail. Due to the limited computational power on most MAV platforms, algorithms are implemented at two separated processing units. The detector runs at a ground control station (GCS) equipped with NVIDIA GTX 1060 while the tracker runs at a MAV onboard low-cost CPU. The transmission of image and target pose information is bridged via a high-speed Wi-Fi network to minimize the latency. In our experiment, the proposed framework is able to realize real-time detection and tracking with 30 frames per second (FPS) on our system.
机译:本文提出了一种视觉检测和跟踪框架,该框架可以估计微型飞机(MAV)上各种应用的平滑目标位置。提出的框架包含两个主要组件:基于深度学习的检测器和基于相关滤波器的跟踪器。低频运行的检测器首先检测目标并初始化跟踪器。当检测置信度高或跟踪被视为失败时,检测器将更新来自跟踪器的估计目标位置。由于大多数MAV平台上的计算能力有限,因此算法是在两个单独的处理单元上实现的。检测器在配备NVIDIA GTX 1060的地面控制站(GCS)上运行,而跟踪器在板载低成本CPU的MAV上运行。图像和目标姿势信息的传输通过高速Wi-Fi网络进行桥接,以最大程度地减少等待时间。在我们的实验中,提出的框架能够在我们的系统上以每秒30帧(FPS)的速度实现实时检测和跟踪。

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