Online vehicle logo recognition using Cauchy prior logistic regression

Ruilong Chen, M. Hawes, Olga Isupova, L. Mihaylova, Hao Zhu
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引用次数: 6

Abstract

Vehicle logo recognition is an important part of vehicle identification in intelligent transportation systems. State-of-the-art vehicle logo recognition approaches typically consider training models on large datasets. However, there might only be a small training dataset to start with and more images can be obtained during the real-time applications. This paper proposes an online image recognition framework which provides solutions for both small and large datasets. Using this recognition framework, models are built efficiently using a weight updating scheme. Another novelty of this work is that the Cauchy prior logistic regression with conjugate gradient descent is proposed to deal with the multinomial classification tasks. The Cauchy prior results in a quicker convergence speed for the weight updating process which could decrease the computational cost for both online and offline methods. By testing with a publicly available dataset, the Cauchy prior logistic regression deceases the classification time by 59%. An accuracy of up to 98.80% is achieved when the proposed framework is applied.
基于柯西先验逻辑回归的在线车辆标志识别
车辆标志识别是智能交通系统中车辆识别的重要组成部分。最先进的汽车标志识别方法通常考虑在大数据集上训练模型。然而,可能只有一个小的训练数据集开始,在实时应用过程中可以获得更多的图像。本文提出了一种在线图像识别框架,该框架为小型和大型数据集提供了解决方案。利用该识别框架,利用权值更新方案高效地构建模型。本文的另一个新颖之处在于提出了柯西先验逻辑回归与共轭梯度下降的方法来处理多项分类任务。柯西先验使得权值更新过程的收敛速度更快,从而降低了在线和离线方法的计算成本。通过使用公开可用的数据集进行测试,柯西先验逻辑回归将分类时间缩短了59%。应用所提出的框架时,准确率高达98.80%。
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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