基于Gist和GLCM特征的XgBoost鱼类图像分类

Prashengit Dhar, Sunanda Guha
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引用次数: 1

摘要

鱼类图像的分类是模式识别领域的一个复杂问题。鱼类分类是一项复杂的任务。物理形状、大小、方向等使得分类变得复杂。在图像分类中,选择合适的特征也是一个重要问题。鱼类图像分类在渔业服务和农业领域、渔业工业、渔业调查应用等相关领域具有重要意义。为了对鱼类进行评估和计数,还需要对鱼类图像进行分类,这样可以节省时间。提出了一种基于鲁棒Gist特征和灰度共生矩阵(GLCM)特征的鱼类图像分类方法。将去噪和调整图像大小作为预处理任务。将Gist和GLCM特征相结合,得到更好的特征矩阵。功能也分别进行测试。但组合特征向量的性能优于单个特征向量。对来自qut和F4K两个数据集的10种鱼类原始图像进行分类。特征集使用不同的机器学习模型进行训练。其中,XgBoost在QUT和F4K数据集上的准确率分别为90.2%和98.08%。
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Fish Image Classification by XgBoost Based on Gist and GLCM Features
Classification of fish image is a complex issue in the field of pattern recognition. Fish classification is a complicated task. Physical shape, size, orientation etc. made it complex to classify. Selection of appropriate feature is also a great issue in image classification. Classification of fish image is very important in fishing service and agricultural field, fish industry, survey applications of fisheries and in other related area. For the assessment and counting of fishes, classification of fish image is also necessary as it can save time. This paper presents a fish image classification method with the robust Gist feature and Gray Level Co-occurrence Matrix (GLCM) feature. Noise removal and resizing of image is applied as pre-processing task. Gist and GLCM feature are combined to make a better feature matrix. Features are also tested separately. But combined feature vector performs better than individual. Classification is made on ten types of raw images of fish from two datasets -QUT and F4K dataset. The feature set is trained with different machine learning models. Among them, XgBoost performs with 90.2% and 98.08% accuracy for QUT and F4K dataset respectively.
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