基于YOLO算法的全息透镜精确目标检测系统

Haythem Bahri, D. Krčmařík, J. Kočí
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引用次数: 19

摘要

在我们的论文中,我们展示了在微软HoloLens上的实现,在目标检测的背景下支持深度学习。该系统的主要目的是利用深度学习处理和微软HoloLens作为输入/输出设备之间的通信,为增强现实创建更准确的对象检测模型。该系统旨在帮助可穿戴设备用户检测和识别现实世界中的物体。对于目标检测方法,使用了一个称为YOLO的深度学习模型来实现该系统。该模型接近实时,支持检测9000多个目标。我们的系统通过HoloLens对检测到的增强物体及其限制区域或边界框进行标注。它可以在几毫秒内检测到移动物体的新位置。初步结果表明,该方法的目标检测率与检测时间相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accurate Object Detection System on HoloLens Using YOLO Algorithm
We demonstrate in our paper, an implementation on Microsoft HoloLens, deep learning supported in the context of object detection. The main aim of this system is to create the more accurate object detection model for Augmented Reality using communication between the deep learning processing and the Microsoft HoloLens as Input/Output device. This system aims to help the wearable device user to detect and to recognize between objects in real world. For the object detection approach, a deep learning model has been used for the implementation of this system called YOLO. This model is near to real-time and it supports to detect more than 9000 objects. Our system provides the annotation of augmented object detected and its limitation area or bounding box via HoloLens. It allows to detect the new position of moving object in a few milliseconds. Preliminary results show a great rate of object detection with a detection time comparable.
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