Author:
Jacob I Jeena,Darney P Ebby
Abstract
The Internet of Things (IoT) is an ecosystem comprised of multiple devices and connections, a large number of users, and a massive amount of data. Deep learning is especially suited for these scenarios due to its appropriateness for "big data" difficulties and future concerns. Nonetheless, guaranteeing security and privacy has emerged as a critical challenge for IoT administration. In many recent cases, deep learning algorithms have proven to be increasingly efficient in performing security assessments for IoT devices without resorting to handcrafted rules. This research work integrates principal component analysis (PCA) for feature extraction with superior performance. Besides, the primary objective of this research work is to gather a comprehensive survey data on the types of IoT deployments, along with security and privacy challenges with good recognition rate. The deep learning method is performed through PCA feature extraction for improving the accuracy of the process. Our other primary goal in this study paper is to achieve a high recognition rate for IoT based image recognition. The CNN approach was trained and evaluated on the IoT image dataset for performance evaluation using multiple methodologies. The initial step would be to investigate the application of deep learning for IoT image acquisition. Additionally, when it comes to IoT image registering, the usefulness of the deep learning method has been evaluated for increasing the appropriateness of image recognition with good testing accuracy. The research discoveries on the application of deep learning in the Internet of Things (IoT) system are summarized in an image-based identification method that introduces a variety of appropriate criteria.
Publisher
Inventive Research Organization
Reference33 articles.
1. [1] Deng, Z., Cao, Y., Zhou, X., Yi, Y., & You, I. (2020). Toward efficient image recognition in sensor-based iot: a weight initialization optimizing method for cnn based on rgb influence proportion. Sensors, 20(10), 2866.
2. [2] Patil, Prachu J., Ritika V. Zalke, Kalyani R. Tumasare, Bhavana A. Shiwankar, Shivani R. Singh, and Shailesh Sakhare. "IoT Protocol for Accident Spotting with Medical Facility." Journal of Artificial Intelligence 3, no. 02 (2021): 140-150.
3. [3] Hexiang, L. I. (2017). Design of iot vision based image automatic identification system for tourist attraction abnormalities. Modern Electronics Technique, 40(4), 124-131.
4. [4] Chen, Joy Iong-Zong, and Kong-Long Lai. "Deep Convolution Neural Network Model for Credit-Card Fraud Detection and Alert." Journal of Artificial Intelligence 3, no. 02 (2021): 101-112.
5. [5] Santos, P. C., De Lima, J. P. C., De Moura, R. F., Ahmed, H., Alves, M. A. Z., & Beck, A. C. S., et al. (2019). A technologically agnostic framework for cyber-physical and iot processing-in-memory-based systems simulation. Microprocessors and microsystems, 69(SEP.), 101-111.
Cited by
138 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献