4.8 Article

Human Inertial Thinking Strategy: A Novel Fuzzy Reasoning Mechanism for IoT-Assisted Visual Monitoring

Journal

IEEE INTERNET OF THINGS JOURNAL
Volume 10, Issue 5, Pages 3735-3748

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JIOT.2022.3142115

Keywords

Monitoring; Filtering algorithms; Cognition; Visualization; Inference algorithms; Fuzzy reasoning; Filtering theory; AI; correlation filter algorithm; edge learning; future generation systems; fuzzy reasoning; fuzzy thinking; human inertial thinking; smart cities; visual monitoring

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Computer vision, particularly visual monitoring technology, has shown great potential in the complex monitoring environment. This article proposes a fuzzy inference-based monitoring method that utilizes human inertial thinking characteristics to infer the target's location and applies an alternative selection strategy based on thinking set. Experimental results on multiple datasets demonstrate the effectiveness and robustness of the proposed method in IoT-assisted monitoring.
Computer vision has always been a hot field of research by contemporary scholars due to its wide range of applications. As an important branch of this field, the visual monitoring technology has shown superior vitality in the actual monitoring environment of the Internet of Things (IoT). However, when the monitoring environment is complex, once the target monitoring fails, the important information related to the target also disappears. At this time, if the existing monitoring method is used, the target cannot be monitored again. Moreover, the current filtering monitoring algorithm also has the problem of poor interpretability. Therefore, this article combines the relevant characteristics of human inertial thinking when dealing with such problems. First, our method screens the movement information of the target and introduces a fuzzy reasoning mechanism to infer the location area of the target through fuzzy thinking. Then, an alternative selection strategy based on the thinking set is applied, which alternates between the location of thinking reasoning and the location of memory to further obtain the effective visual monitoring of the target. The filtering and monitoring algorithm fused with the new mechanism in the OTB-2015 data set, the UVA123 data set, and the TC128 data set all show that the proposed fuzzy inference mechanism has good robustness and universality. Furthermore, our results confirm that it can not only ensure the monitoring speed and overall accuracy but also improve the stability of monitoring in the IoT-assisted monitoring environment, showing its effectiveness compared to state-of-the-art methods. In addition, our results confirm that the integration of the proposed edge learning method with the IoT can be well applied to the construction of smart cities and future generation systems.

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