基于内容的图像检索中颜色、纹理和形状特征的自动加权

Akmal Akmal, Rinaldi Munir, Judhi Santoso
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引用次数: 0

摘要

图像检索是通过测量查询图像的特征值与其他图像的接近程度,在数据库中查找与查询图像相似的图像的过程。目前,图像检索主要是结合几种不同的表示或特征的方法。在组合图像的颜色特征、纹理特征、形状特征等特征时,需要确定每个特征的最优权重。在本研究中,我们使用多层感知器人工神经网络(MLP)方法自动获取特征权值,同时寻找最优权值。颜色矩用于寻找9个颜色特征,灰度共生矩阵(GLCM)用于寻找4个纹理特征,Hu矩用于寻找7个形状特征,共计20个神经元,所有这些特征成为我们MLP网络的输入层。输出层中的三个神经元成为每个特征的自动权值。这些权重用于组合每个特征在获得相关图像中的作用。欧几里得距离用于度量相似性。使用自动特征权值获得的平均精度值对于synthetic数据集为93.94%,对于Coil-100数据集为91.19%,对于Wang数据集为54.31%。这些结果与目标的平均差异为5.06%,因此自动特征加权效果很好。该值是在隐藏层大小为11,学习率为0.1时获得的。此外,与手动特征加权相比,使用自动特征加权可以获得更准确的结果。
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Automatic Weight of Color, Texture, and Shape Features in Content-Based Image Retrieval Using Artificial Neural Network
Image retrieval is the process of finding images in the database that are similar to the query image by measuring how close the feature values of the query image are to other images. Image retrieval is currently dominated by approaches that combine several different representations or features. The optimal weight of each feature is needed in combining the image features such as color features, texture features, and shape features. In this study, we use a multi-layer perceptron artificial neural network (MLP) method to obtain feature weights automatically and simultaneously look for optimal weights. The color moment is used to find nine color features, Gray Level Co-occurrence Matrix (GLCM) to find four texture features, and Hu Moment to find seven shape features totaling 20 neurons and all of these features become the input layer in our MLP network. Three neurons in output layers become the automatic weight of each feature. These weights are used to combine each feature's role in obtaining the relevant image. Euclidean Distance is used to measure similarity. The average precision values obtained using automatic feature weights are 93.94% for the synthetic dataset, 91.19% for the Coil-100 dataset, and 54.31% for the Wang dataset. These results have an average difference of 5.06% with the target so automatic feature weighting works well. This value is obtained at a hidden layer size of 11 and a learning rate of 0.1. In addition, the use of automatic feature weighting gives more accurate results compared to manual feature weighting.
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来源期刊
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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