MSER-Vertical Sobel for Vehicle Logo Detection

None Gamma Kosala, None Agus Harjoko, None Sri Hartati
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Abstract

Detecting a vehicle logo is the first step before realizing the identity of the logo. However, the detection of logos can pose difficulties due to various factors, including logo variations, differing scales and orientations, background interference, varying lighting conditions, and partial obstruction. This paper presents a vehicle logo detection method using hand-crafted features. We used a combination of Maximally Stable Extremal Region (MSER) and Vertical Sobel. We combine vertical Sobel with MSER to overcome MSER's limitation in recognizing objects of different sizes. These two features are merged using a closing morphology operation to form blobs selected as logo candidate areas. Moreover, a Support Vector Machine (SVM) is implemented to choose a logo area by analyzing each candidate's Histogram of Oriented Gradient (HOG). The proposed method was compared with other methods by implementing them on the same dataset. The significant advantage of using MSER-Vertical Sobel is its fast computation time. It is faster than other approaches that use non-handcrafted features. The test results show that the MSER-Vertical Sobel can achieve high accuracy and the fastest computation time.
mser -垂直索贝尔车辆标志检测
检测车辆标识是实现标识身份的第一步。然而,由于各种因素,包括标志的变化、不同的尺度和方向、背景干扰、不同的照明条件和部分障碍物,标志的检测可能会带来困难。本文提出了一种基于手工特征的车辆标志检测方法。我们使用了最大稳定极区(MSER)和垂直索贝尔的组合。我们将垂直Sobel与MSER相结合,克服了MSER在识别不同大小物体时的局限性。使用闭合形态学操作合并这两个特征,形成选择作为标志候选区域的斑点。在此基础上,利用支持向量机(SVM)分析各候选区域的梯度直方图(HOG)来选择标识区域。通过在同一数据集上实现该方法与其他方法进行比较。使用MSER-Vertical Sobel的显著优点是计算时间快。它比其他使用非手工特性的方法要快。实验结果表明,MSER-Vertical Sobel算法具有较高的计算精度和最快的计算速度。
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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