无人机
雷达
计算机科学
多普勒雷达
实时计算
雷达系统
便携式雷达
遥感
人工智能
雷达工程细节
雷达成像
地理
电信
遗传学
生物
作者
Xin Guo,Chea Siang Ng,Erwin de Jong,Adriaan B. Smits
摘要
In recent years, the usages of consumer-grade mini-Unmanned Aerial Vehicles (mini-UAV, also called drones) are drastically increased. To detect and monitor the drone in a highly urbanised environment, a distributed radar system consisting of a group of low-cost small radar sensors is under study. In this paper, we present a micro-Doppler based automatic drone detection/classification system for the low-cost distributed radar sensors to effectively discriminate drones from other types of targets that are common in the urban area, such as vehicles, bicycles and walking persons. It consists of a two-step processing. The first step uses the complex cadence velocity diagram to extract the target micro-Doppler features and yields preliminary classification results. The second step jointly considers the current and previous N successive time segments to give the final determination. The two-step drone classification technique is implemented in our low-cost distributed radar demonstrator and tested in different locations of real environments. Promising drone classification results are demonstrated.
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