M-VCR: Multi-View Consensus Recognition for Real-Time Experimentation

D. McKee, P. Townend, D. Webster, Jie Xu
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引用次数: 1

Abstract

A major application area in the computer vision domain is gesture recognition, requiring real-time image classification to respond to human interactions. However, current state-of-the-art high-quality algorithms for image classification do not meet many dynamic real-time requirements. This paper presents the development of M-VCR - a novel approach for improving the reliability of real-time image classification. M-VCR increases the quality of classifications under real-time constraints through the adoption of fast classification algorithms, although these algorithms individually produce lower quality results, utilisation under a 'consensus' approach can achieve results equivalent to those of much higher-quality algorithms. The proposed approach also allows for different algorithms to be utilised in parallel, building on the fault tolerance technique of N-versioning. A significant improvement in image classification is experimentally demonstrated for both the SURF and MSER feature detectors through our integration consensus approach. This improvement is delivered entirely through the integration method without requiring modification of the source algorithms being used.
M-VCR:实时实验的多视图共识识别
计算机视觉领域的一个主要应用领域是手势识别,需要实时图像分类来响应人类的交互。然而,目前最先进的高质量图像分类算法不能满足许多动态实时性要求。本文介绍了一种提高实时图像分类可靠性的新方法——M-VCR的发展。M-VCR通过采用快速分类算法提高了实时约束下的分类质量,尽管这些算法单独产生较低质量的结果,但在“共识”方法下的利用可以获得与高质量算法相当的结果。提出的方法还允许并行使用不同的算法,建立在n版本控制的容错技术之上。通过我们的集成共识方法,实验证明SURF和MSER特征检测器在图像分类方面都有显著的改进。这种改进完全通过集成方法实现,而不需要修改所使用的源算法。
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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