Colour recognition using colour histogram feature extraction and K-nearest neighbour classifier

Rabia Bayraktar, Batur Alp Akgul, K. Bayram
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引用次数: 3

Abstract

K-nearest neighbours (KNN) is a widely used neural network and machine learning classification algorithm. Recently, it has been used in the neural network and digital image processing fields. In this study, the KNN classifier is used to distinguish 12 different colours. These colours are black, blue, brown, forest green, green, navy, orange, pink, red, violet, white and yellow. Using colour histogram feature extraction, which is one of the image processing techniques, the features that distinguish these colours are determined. These features increase the effectiveness of the KNN classifier. The training data consist of saved frames and the test data are obtained from the video camera in real-time. The video consists of consecutive frames. The frames are 100 × 70 in size. Each frame is tested with K = 3,5,7,9 and the obtained results are recorded. In general, the best results are obtained when used K = 5.   Keywords: KNN algorithm, classifier, application, neural network, image processing, developed, colour, dataset, colour recognition.
基于颜色直方图特征提取和k近邻分类器的颜色识别
KNN (K-nearest neighbors)是一种应用广泛的神经网络和机器学习分类算法。近年来,它已被应用于神经网络和数字图像处理领域。在本研究中,KNN分类器被用来区分12种不同的颜色。这些颜色是黑色、蓝色、棕色、森林绿色、绿色、海军蓝、橙色、粉红色、红色、紫色、白色和黄色。利用图像处理技术之一的颜色直方图特征提取,确定区分这些颜色的特征。这些特征提高了KNN分类器的有效性。训练数据由保存的帧组成,测试数据由摄像机实时获取。视频由连续的帧组成。镜框的尺寸是100 × 70。以K = 3、5、7、9对每一帧进行测试,并记录得到的结果。一般来说,当K = 5时,效果最好。关键词:KNN算法,分类器,应用,神经网络,图像处理,开发,颜色,数据集,颜色识别。
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