基于社交物联网的安全和隐私保护方法以及使用 DenseNet 卷积神经网络进行的分类

C. Maniveena, R. Kalaiselvi
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引用次数: 0

摘要

这种方法通过使用全局注意力,对文本描述中的单词给予更多关注,从而能够合成精细的图像。此外,我们还采用了深度关注多模态相似性模型(DAMSM)来计算生成器中的匹配损失。虽然这项工作生成的图像质量很高,但在训练系统时会有一些损失,而且需要足够的时间进行训练。虽然将字符级密集网算法应用于文本分类任务的研究很少,但我们在本文中提出的密集网结构在图像分类任务中表现出色。广泛的测试表明,它们在抗干扰能力方面表现更佳,而且可以影响许多组织在用户隐私保护、框架暗示和监管要求等规范上实施信息使用和语言信息。
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A security and privacy preserving approach based on social IoT and classification using DenseNet convolutional neural network
This method is able to synthesize fine-detailed images by the use of a global attention that gives more attention to the words in the textual descriptions. Also we have the deep attention multimodal similarity model (DAMSM) that calculates the matching loss in the generator. Though this work produced images of high quality, there was some loss while training the system and it takes enough time for training. Although there has been little study on applying character-level Dense Net algorithms for text classification tasks; the Dense Net structures we suggested in this paper have shown outstanding performance in image classification tasks. Extensive testing has revealed that they perform better when it comes to their ability to withstand interruption and that they can influence exerted many organizations implementing information usage and language information on the specifications of user privacy protection, framework implies, and regulatory requirements.
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