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首页> 外文期刊>Internet of Things Journal, IEEE >Efficient Image Recognition and Retrieval on IoT-Assisted Energy-Constrained Platforms From Big Data Repositories
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Efficient Image Recognition and Retrieval on IoT-Assisted Energy-Constrained Platforms From Big Data Repositories

机译:从大数据存储库的IOT辅助能量受限平台上有效的图像识别和检索

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摘要

The advanced computational capabilities of many resource constrained devices, such as smartphones have enabled various research areas including image retrieval from big data repositories for numerous Internet of Things (IoT) applications. The major challenges for image retrieval using smartphones in an IoT environment are the computational complexity and storage. To deal with big data in IoT environment for image retrieval, this paper proposes a light-weighted deep learning-based system for energy-constrained devices. The system first detects and crops face regions from an image using Viola-Jones algorithm with additional face and nonface classifier to eliminate the miss-detection problem. Second, the system uses convolutional layers of a cost effective pretrained CNN model with defined features to represent faces. Next, features of the big data repository are indexed to achieve a faster matching process for real-time retrieval. Finally, Euclidean distance is used to find similarity between query and repository images. For experimental evaluation, we created a local facial images dataset, including both single and group facial images. This dataset can be used by other researchers as a benchmark for comparison with other real-time facial image retrieval systems. The experimental results show that our proposed system outperforms other state-of-the-art feature extraction methods in terms of efficiency and retrieval for IoT-assisted energy-constrained platforms.
机译:许多资源受限设备的高级计算能力,例如智能手机已经启用了各种研究区域,包括来自大数据存储库的图像检索,用于许多物联网(物联网)应用程序。在物联网环境中使用智能手机进行图像检索的主要挑战是计算复杂性和存储。为了处理IOT环境中的大数据进行图像检索,提出了一种基于深层学习的能量受限设备的系统。系统首先使用具有附加面部和非面积分类器的Viola-Jone算法从图像中检测和作物面部区域,以消除错过检测问题。其次,系统使用具有定义特征的成本有效的预训练CNN模型的卷积层来表示面部。接下来,索引大数据存储库的功能以实现更快的匹配过程,以便实时检索。最后,欧几里德距离用于在查询和存储库图像之间找到相似性。对于实验性评估,我们创建了一个本地面部图像数据集,包括单个和组面部图像。其他研究人员可以使用该数据集作为与其他实时面部图像检索系统相比的基准。实验结果表明,我们所提出的系统在对IOT辅助能量受限平台的效率和检索方面优于其他最先进的特征提取方法。

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