Design of intelligent algorithm for object search based on IoT digital images

Yinghao Li
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Abstract

With the development of artificial intelligence, traditional object search and image recognition have been replaced by the Internet of Things and artificial intelligence. However, traditional object search algorithms often lack accuracy and low precision. Therefore, this study proposes a new intelligent encryption algorithm to address the issues of insufficient accuracy in object search algorithms and image recognition algorithms. The new algorithm ensures the security of user data and the response efficiency of the model during the conversation process by integrating fully homomorphic encryption technology and dynamic sparse attention mechanism. The dynamic sparse attention mechanism introduced simultaneously improves the model's ability to handle long sequence data by dynamically adjusting attention weights. Experimental results showed that the precision of the proposed algorithm was 0.05 % higher than that of random algorithms and 0.19 % higher than that of sorting algorithms. The recall rate of the proposed algorithm was 0.14 % higher than that of random algorithms and 0.16 % higher than that of sorting algorithms. The research algorithm can identify objects with certain characteristics and is suitable for specific environments, greatly reducing the probability of data leakage in object search and providing new ideas for research in this field.
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基于物联网数字图像的物体搜索智能算法设计
随着人工智能的发展,传统的物体搜索和图像识别已被物联网和人工智能所取代。然而,传统的物体搜索算法往往缺乏准确性,精度较低。因此,本研究针对物体搜索算法和图像识别算法中精度不足的问题,提出了一种新的智能加密算法。新算法通过整合全同态加密技术和动态稀疏关注机制,确保了对话过程中用户数据的安全性和模型的响应效率。同时引入的动态稀疏注意力机制通过动态调整注意力权重,提高了模型处理长序列数据的能力。实验结果表明,所提算法的精确度比随机算法高 0.05%,比排序算法高 0.19%。建议算法的召回率比随机算法高 0.14%,比排序算法高 0.16%。该研究算法能够识别具有特定特征的对象,适用于特定环境,大大降低了对象搜索中数据泄露的概率,为该领域的研究提供了新思路。
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