OBJECT RECOGNITION FOR AUGMENTED REALITY APPLICATIONS

Vladislav Li, Georgios Amponis, Jean-Christophe Nebel, V. Argyriou, T. Lagkas, P. Sarigiannidis
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Abstract

Developments in the field of neural networks, deep learning, and increases in computing systems’ capacity have allowed for a significant performance boost in scene semantic information extraction algorithms and their respective mechanisms. The work presented in this paper investigates the performance of various object classification- recognition frameworks and proposes a novel framework, which incorporates Super-Resolution as a preprocessing method, along with YOLO/Retina as the deep neural network component. The resulting scene analysis framework was fine-tuned and benchmarked using the COCO dataset, with the results being encouraging. The presented framework can potentially be utilized, not only in still image recognition scenarios but also in video processing.
增强现实应用的对象识别
神经网络、深度学习领域的发展以及计算系统能力的提高使得场景语义信息提取算法及其各自机制的性能得到了显著提升。本文研究了各种目标分类识别框架的性能,并提出了一种新的框架,该框架将超分辨率作为预处理方法,并将YOLO/Retina作为深度神经网络组件。使用COCO数据集对生成的场景分析框架进行了微调和基准测试,结果令人鼓舞。所提出的框架不仅可以用于静态图像识别场景,而且可以用于视频处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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