Litcius/Paper detail

Human Detection Based on Time-Varying Signature on Range-Doppler Diagram Using Deep Neural Networks

Youngwook Kim, Ibrahim Alnujaim, Sungjin You, Byung Jang Jeong

2020IEEE Geoscience and Remote Sensing Letters36 citationsDOI

Abstract

We propose the detection of humans using millimeter-wave FMCW radar based on time-varying signatures of range-Doppler diagrams using deep recurrent neural networks (DRNNs). Demand for human detection is increasing for security, surveillance, and search and rescue purposes, recently, with a particular focus on urban areas filled with clutter and moving targets. We suggest the classification of targets based on their signatures in range-Doppler plots with time because the signatures can be consecutively observed. We measure five target types: humans, cars, cyclists, dogs, and road clutter using millimeter-wave FMCW radar that transmits fast chirps at 77 GHz. To maximize the classification accuracy using the time-varying range-Doppler signatures of the targets, we investigate and compare the performance of 2-D-deep convolutional neural networks (DCNN), 3-D-DCNN, and DRNN along with 2-D-DCNN. The DRNN plus 2-D-DCNN showed the best performance, and the classification accuracy yields 99%, with the human classification rate of 100%.

Topics & Concepts

ClutterComputer scienceConvolutional neural networkArtificial intelligenceRadarDeep learningExtremely high frequencyPattern recognition (psychology)Doppler effectContinuous-wave radarDoppler radarArtificial neural networkRange (aeronautics)Constant false alarm rateRemote sensingRadar imagingTelecommunicationsGeologyEngineeringPhysicsAerospace engineeringAstronomyAdvanced SAR Imaging TechniquesRadar Systems and Signal ProcessingMicrowave Imaging and Scattering Analysis