Vision-Based Deep Q-Learning Network Models to Predict Particulate Matter Concentration Levels Using Temporal Digital Image Data

Joint Authors

Kim, SungHwan
Han, SungWon
Jung, SeHee
Yang, SeongMin
Han, JiSeong
Lee, ByungYong
Lee, JaeHwa

Source

Journal of Sensors

Issue

Vol. 2019, Issue 2019 (31 Dec. 2019), pp.1-10, 10 p.

Publisher

Hindawi Publishing Corporation

Publication Date

2019-06-26

Country of Publication

Egypt

No. of Pages

10

Main Subjects

Civil Engineering

Abstract EN

Particulate matter (PM) has been revealed to have detrimental effects on public health, social economy, agriculture, and so forth.

Thus, it became one of the major concerns in terms of a factor that can reduce “quality of life” over East Asia, where the concentration is significantly high.

In this regard, it is imperative to develop affordable and efficient prediction models to monitor real-time changes in PM concentration levels using digital images, which are readily available for many individuals (e.g., via mobile phone).

Previous studies (i.e., DeepHaze) were limited in scope to priorly collected data and thereby less practical in providing real-time information (i.e., undermined interprediction).

This drawback led us to hardly capture drastic changes caused by weather or regions of interests.

To address this challenge, we propose a new method called Deep Q-haze, whose inference scheme is built on an online learning-based method in collaboration with reinforcement learning and deep learning (i.e., Deep Q-learning), making it possible to improve testing accuracy and model flexibility in virtue of real-time basis inference.

Taking into account various experiment scenarios, the proposed method learns a binary decision rule on the basis of video sequences to predict, in real time, whether the level of PM10 (particles smaller than 10 in aerodynamic diameter) concentration is harmful (>80μg/m3) or not.

The proposed model shows superior accuracy compared to existing algorithms.

Deep Q-haze effectively accounts for unexpected environmental changes in essence (e.g., weather) and facilitates monitoring of real-time PM10 concentration levels, showing implications for better understanding of characteristics of airborne particles.

American Psychological Association (APA)

Kim, SungHwan& Jung, SeHee& Yang, SeongMin& Han, JiSeong& Lee, ByungYong& Lee, JaeHwa…[et al.]. 2019. Vision-Based Deep Q-Learning Network Models to Predict Particulate Matter Concentration Levels Using Temporal Digital Image Data. Journal of Sensors،Vol. 2019, no. 2019, pp.1-10.
https://search.emarefa.net/detail/BIM-1191896

Modern Language Association (MLA)

Kim, SungHwan…[et al.]. Vision-Based Deep Q-Learning Network Models to Predict Particulate Matter Concentration Levels Using Temporal Digital Image Data. Journal of Sensors No. 2019 (2019), pp.1-10.
https://search.emarefa.net/detail/BIM-1191896

American Medical Association (AMA)

Kim, SungHwan& Jung, SeHee& Yang, SeongMin& Han, JiSeong& Lee, ByungYong& Lee, JaeHwa…[et al.]. Vision-Based Deep Q-Learning Network Models to Predict Particulate Matter Concentration Levels Using Temporal Digital Image Data. Journal of Sensors. 2019. Vol. 2019, no. 2019, pp.1-10.
https://search.emarefa.net/detail/BIM-1191896

Data Type

Journal Articles

Language

English

Notes

Includes bibliographical references

Record ID

BIM-1191896