增强现实应用中场景理解的模块化深度学习框架

Vladislav Li, B. Villarini, Jean-Christophe Nebel, Argyriou Vasileios
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引用次数: 0

摘要

增强现实(AR)应用程序以自然图像和视频为输入,旨在通过叠加的数字内容增强现实世界,实现用户与环境之间的交互。这个过程中的一个重要步骤是自动场景分析和理解,这应该是实时的,并且具有良好的目标识别精度。在这项工作中,提出了一个基于超分辨率网络与检测和识别深度网络相结合的端到端框架,以提高性能和降低处理时间。这种新颖的方法已经在两个不同的数据集上进行了评估:流行的COCO数据集,其真实图像用于对许多不同的计算机视觉任务进行基准测试,以及生成的数据集,其中合成图像重建了各种环境,照明和获取条件。评估分析主要集中在小物体上,这对正确检测和识别更具挑战性。结果表明,在大多数选择条件下,所提出的端到端方法对小而低分辨率目标的平均精度较高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Modular Deep Learning Framework for Scene Understanding in Augmented Reality Applications
Taking as input natural images and videos, augmented reality (AR) applications aim to enhance the real world with superimposed digital contents, enabling interaction between the user and the environment. One important step in this process is automatic scene analysis and understanding, which should be performed both in real time and with a good level of object recognition accuracy. In this work, an end-to-end framework based on the combination of a Super Resolution network with a detection and recognition deep network has been proposed to increase performance and lower processing time. This novel approach has been evaluated on two different datasets: the popular COCO dataset, whose real images are used for benchmarking many different computer vision tasks, and a generated dataset with synthetic images recreating a variety of environmental, lighting, and acquisition conditions. The evaluation analysis is focused on small objects, which are more challenging to correctly detect and recognise. The results show that the Average Precision is higher for small and low-resolution objects for the proposed end-to-end approach in most of the selected conditions.
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