Publication | Closed Access
Surrounding Vehicle Detection Using an FPGA Panoramic Camera and Deep CNNs
54
Citations
53
References
2019
Year
Convolutional Neural NetworkScene AnalysisMachine VisionImage AnalysisEngineeringPattern RecognitionObject DetectionObject RecognitionFpga Panoramic CameraDeep CnnsScene UnderstandingEmbedded Fpga DesignVision RecognitionCamera NetworkConvolutional LayersDeep LearningVehicle DetectionComputer Vision
Surrounding vehicle detection is one of the most important modules for a vision-based driver assistance system (VB-DAS) or an autonomous vehicle. In this paper, we put forward a wireless panoramic camera system for real-time and seamless imaging of the 360-degree driving scene. Using an embedded FPGA design, the proposed panoramic camera system can perform fast image stitching and produce panoramic videos in real-time, which greatly relives the computation and storage burden of a traditional multi-camera-based panoramic system. For surrounding vehicle detection, we present a novel deep convolutional neural network - EZ-Net, which perceives the potential vehicles by using 13 convolutional layers and locates the vehicles by a local non-maximum suppression process. Experimental results demonstrate that, the proposed EZ-Net performs vehicle detection on the panoramic video at a speed of 140 fps while holding a competing accuracy with the state-of-the-art detectors.
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