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Applications of Deep Learning Using Quaternary Hash Codes for Image Retrieval

机译:四元哈希码在深度学习中的应用

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Image retrieval technology has made great breakthroughs in the development of computer vision. Feature extraction is crucial to image retrieval as a good method not only brings convenience to image recognition, but also improves the performance of image retrieval system. Many traditional methods only extract shallow features like the statistics of brightness, color components and texture measures, which miss the contextual semantic information and cannot behave well in image retrieval. However, feature extraction based on deep learning is able to obtain better features with semantic information. Therefore, much work has shown that integrating neural network with hash codes performs better in retrieval tasks. Encouraged by this, we propose an image hash retrieval algorithm by optimizing structures in deep layer aggregation network (DlaNet). This model is mainly composed of an improved net called DlaNet-V and a four-valued hash code scheme. The DlaNet-V is optimized on the basis of DlaNet, improving the efficiency. Meanwhile, the binary hash codes are switched into the quaternary hash codes to make the model more robust and efficient. Experiments are conducted on the CIFAR-10 data set and a medical device image data set collected by authors. Results show that the image retrieval based on DlaNet-V and quaternary hash code is more accurate and stable.
机译:图像检索技术在计算机视觉的发展中取得了重大突破。特征提取对于图像检索至关重要,因为一种好的方法不仅为图像识别带来了便利,而且提高了图像检索系统的性能。许多传统方法仅提取诸如亮度统计,颜色分量和纹理度量之类的浅层特征,这些浅层特征会丢失上下文语义信息,并且在图像检索中表现不佳。但是,基于深度学习的特征提取能够通过语义信息获得更好的特征。因此,大量工作表明,将神经网络与哈希码集成在一起可以更好地完成检索任务。受此启发,我们提出了一种通过优化深层聚合网络(DlaNet)中的结构的图像哈希检索算法。该模型主要由称为DlaNet-V的改进网络和四值哈希码方案组成。 DlaNet-V在DlaNet的基础上进行了优化,从而提高了效率。同时,将二进制哈希码转换为四元哈希码,使模型更加健壮和高效。对作者收集的CIFAR-10数据集和医疗设备图像数据集进行了实验。结果表明,基于DlaNet-V和四元哈希码的图像检索更加准确,稳定。

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