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首页> 外文期刊>Circuits and Systems for Video Technology, IEEE Transactions on >Riemannian Alternative Matrix Completion for Image-Based Flame Recognition
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Riemannian Alternative Matrix Completion for Image-Based Flame Recognition

机译:基于图像的火焰识别的黎曼变换矩阵完成

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摘要

The flame image has important significance in combustion state recognition and judgment, which can be used effectively for control of energy consumption and exhaust emissions. Due to the harsh industrial environments, flame images are usually corrupted by transmission errors or coding issues, which makes the combustion state analysis very challenging. This paper proposes a novel flame combustion state analysis framework, which provides new insight into two crucial issues: corrupted flame image recovery and combustion state recognition. First, we propose Riemannian alternative optimization (RAO) with fast convergence and the global optimization ability to recover the corrupted flame image. More specifically, RAO constructs a low-rank factorization model and exploits the geometric nature of the flame image to perform the optimization on Riemannian manifolds. Second, we use Fisher discriminant analysis to exploit discriminative features of the recovered flame image and provide well-separated classes of the combustion state for recognition. The experiments show that the proposed framework recovers the corrupted flame image efficiently and achieves satisfying performance of combustion state recognition.
机译:火焰图像在燃烧状态识别和判断中具有重要意义,可以有效地控制能耗和废气排放。由于恶劣的工业环境,火焰图像通常会因传输错误或编码问题而损坏,这使燃烧状态分析非常具有挑战性。本文提出了一种新颖的火焰燃烧状态分析框架,该框架为两个关键问题提供了新的见解:损坏的火焰图像恢复和燃烧状态识别。首先,我们提出了具有快速收敛性和全局优化能力的黎曼备选优化(RAO),以恢复损坏的火焰图像。更具体地说,RAO构造了一个低阶分解模型,并利用火焰图像的几何特性对黎曼流形进行了优化。其次,我们使用Fisher判别分析来利用恢复的火焰图像的判别特征,并提供良好区分的燃烧状态类别以供识别。实验表明,所提出的框架能够有效地还原出损坏的火焰图像,并达到令人满意的燃烧状态识别性能。

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