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Human and bird detection and classification based on Doppler radar spectrograms and vision images using convolutional neural networks

机译:基于多普勒雷达谱图和使用卷积神经网络的视觉图像的人员和鸟类检测和分类

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The study investigated object detection and classification based on both Doppler radar spectrograms and vision images using two deep convolutional neural networks. The kinematic models for a walking human and a bird flapping its wings were incorporated into MATLAB simulations to create data sets. The dynamic simulator identified the final position of each ellipsoidal body segment taking its rotational motion into consideration in addition to its bulk motion at each sampling point to describe its specific motion naturally. The total motion induced a micro-Doppler effect and created a micro-Doppler signature that varied in response to changes in the input parameters, such as varying body segment size, velocity, and radar location. Micro-Doppler signature identification of the radar signals returned from the target objects that were animated by the simulator required kinematic modeling based on a short-time Fourier transform analysis of the signals. Both You Only Look Once V3 and Inception V3 were used for the detection and classification of the objects with different red, green, blue colors on black or white backgrounds. The results suggested that clear micro-Doppler signature image-based object recognition could be achieved in low-visibility conditions. This feasibility study demonstrated the application possibility of Doppler radar to autonomous vehicle driving as a backup sensor for cameras in darkness. In this study, the first successful attempt of animated kinematic models and their synchronized radar spectrograms to object recognition was made.
机译:研究基于多普勒雷达谱图和使用两个深卷积神经网络的视觉图像研究了对象检测和分类。步行人类和鸟翼的鸟翼的运动模型被纳入Matlab模拟,以创建数据集。动态模拟器识别每个椭圆体段的最终位置,除了在每个采样点处的散装运动之外考虑其旋转运动,以便自然地描述其特定运动。总运动诱导微多普勒效应,并产生了响应于输入参数的变化而变化的微多普勒签名,例如不同的体段大小,速度和雷达位置。从模拟器动画的目标对象返回的微多普勒签名识别所需的基于信号的短时傅里叶变换分析所需的运动学建模。两个你只看一次V3和Inception v3被用于用不同的红色,绿色,蓝色的对象的检测和分类,在黑色或白色背景上。结果表明,在低可见性条件下,可以实现基于微多普勒的基于微量多普勒签名图像的对象识别。这种可行性研究证明了多普勒雷达的应用可能性作为自主车辆作为黑暗中的摄像机备用传感器驱动的自主车辆。在本研究中,进行了动画运动模型的第一次成功尝试并将其同步的雷达谱图用于对象识别。

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