Development of an Image Processing Techniques for Vehicle Classification Using OCR and SVM

Ishola Oluwaseun Joshua, M. O. Arowolo, M. O. Adebiyi, O. R. Oluwaseun, K. Gbolagade
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Abstract

Image processing is a method for enhancing unprocessed images from cameras on aircraft, spacecraft, and satellites as well as images taken regularly for a variety of uses. In general, the following strategies can be used to categorize all image processing operations: Images are represented in several ways, which are referred to as image representation, image preprocessing, image enhancement, image restoration, image analysis, picture reconstruction, and image data compression. The first radiometric normalization, geometric distortion correction, and noise removal of the raw image data been discussed in the past. The goal of the information extraction procedures is to automate the identification of tone in a scene by replacing the visual examination of image data with quantitative techniques. This entails analyzing multispectral image data and establishing the earth cover identification of each pixel in an image using statistically based decision procedures. The goal of the classification procedure is to sort all of the pixels in a digital image into one of several different earth cover classes or themes. The purpose of this study is to examine various image processing approaches and algorithms, many sorts of image processing algorithms: Optical Character Recognition (OCR) and Supporting Vector Machine (SVM) a feature extraction technique, on the vehicle classification dataset and had accurate results of 90% for SVM and 95% for OCR, to further improve the performance of machine algorithms in terms of accuracy for image processing technique using a vehicle. This study can be used for vehicle classification research, it also advances and improves the performance of the system in terms of accurate detection.
基于OCR和SVM的车辆分类图像处理技术研究
图像处理是一种用于增强来自飞机、航天器和卫星上的相机的未处理图像以及为各种用途定期拍摄的图像的方法。一般来说,可以使用以下策略对所有图像处理操作进行分类:图像有几种表示方式,分别是图像表示、图像预处理、图像增强、图像恢复、图像分析、图像重建和图像数据压缩。首先讨论了原始图像数据的辐射归一化、几何畸变校正和噪声去除。信息提取程序的目标是通过用定量技术取代图像数据的视觉检查来自动识别场景中的色调。这需要分析多光谱图像数据,并使用基于统计的决策程序建立图像中每个像素的地球覆盖识别。分类过程的目标是将数字图像中的所有像素分类为几个不同的地球覆盖类别或主题之一。本研究的目的是研究各种图像处理方法和算法,多种图像处理算法:光学字符识别(OCR)和支持向量机(SVM)一种特征提取技术,在车辆分类数据集上,SVM的准确率为90%,OCR的准确率为95%,进一步提高机器算法在车辆图像处理技术精度方面的性能。本研究可用于车辆分类研究,同时也提高了系统在检测准确性方面的性能。
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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