Content-Based Image Retrieval Using Hybrid Densenet121-Bilstm and Harris Hawks Optimization Algorithm

K. Sanjeevaiah, T. S. Reddy, S. Karthik, Mahesh Kumar, D. Vivek
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引用次数: 3

Abstract

In the field of digital data management, content-based image retrieval (CBIR) has become one of the most important research areas, and it is used in many fields. This system searches a database of images to retrieve most visually comparable photos to a query image. It is based on features derived directly from the image data, rather than on keywords or annotations. Currently, deep learning approaches have demonstrated a strong interest in picture recognition, particularly in extracting information about the features of the image. Therefore, a Densenet-121 is employed in this work to extract high-level and deep characteristics from the images. Afterwards, the training images are retrieved from the dataset and compared to the query image using a Bidirectional LSTM (BiLSTM) classifier to obtain the relevant images. The investigations are conducted using a publicly available dataset named Corel, and the f-measure, recall, and precision metrics are used for performance assessment. Investigation outcomes show that the proposed technique outperforms the existing image retrieval techniques.
基于内容的图像检索,基于混合Densenet121-Bilstm和Harris Hawks优化算法
在数字数据管理领域,基于内容的图像检索(CBIR)已成为一个重要的研究领域,并在许多领域得到应用。该系统搜索图像数据库,以检索与查询图像在视觉上最相似的照片。它基于直接来自图像数据的特征,而不是基于关键字或注释。目前,深度学习方法在图像识别方面表现出了浓厚的兴趣,特别是在提取图像特征信息方面。因此,在这项工作中使用Densenet-121从图像中提取高级和深层特征。然后,从数据集中检索训练图像,并使用双向LSTM (BiLSTM)分类器与查询图像进行比较,以获得相关图像。调查使用名为Corel的公开数据集进行,f-measure、召回率和精度指标用于性能评估。研究结果表明,该方法优于现有的图像检索技术。
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