LGAININov 21, 2023

Image Transformation for IoT Time-Series Data: A Review

arXiv:2311.12742v12 citationsh-index: 24
Originality Synthesis-oriented
AI Analysis

It provides a survey for researchers and practitioners in IoT and machine learning, but is incremental as it summarizes existing work without new results.

This paper reviews studies that transform IoT time-series data into images to improve learning model performance, addressing the challenge of exploring hidden dynamic patterns in high-dimensional, high-frequency data.

In the era of the Internet of Things (IoT), where smartphones, built-in systems, wireless sensors, and nearly every smart device connect through local networks or the internet, billions of smart things communicate with each other and generate vast amounts of time-series data. As IoT time-series data is high-dimensional and high-frequency, time-series classification or regression has been a challenging issue in IoT. Recently, deep learning algorithms have demonstrated superior performance results in time-series data classification in many smart and intelligent IoT applications. However, it is hard to explore the hidden dynamic patterns and trends in time-series. Recent studies show that transforming IoT data into images improves the performance of the learning model. In this paper, we present a review of these studies which use image transformation/encoding techniques in IoT domain. We examine the studies according to their encoding techniques, data types, and application areas. Lastly, we emphasize the challenges and future dimensions of image transformation.

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