Weather prediction from real-world images can be termed a complex task when targeting classification using neural networks. Moreover, the number of images throughout the available datasets can contain a huge amount of variance when comparing locations with the weather those images are representing. In this article, the capabilities of a custom built driver simulator are explored specifically to simulate a wide range of weather conditions. Moreover, the performance of a new synthetic dataset generated by the above simulator is also assessed. The results indicate that the use of synthetic datasets in conjunction with real-world datasets can increase the training efficiency of the CNNs by as much as 74%. The article paves a way forward to tackle the persistent problem of bias in vision-based datasets.
CITATION STYLE
Minhas, S., Khanam, Z., Ehsan, S., McDonald-Maier, K., & Hernández-Sabaté, A. (2022). Weather Classification by Utilizing Synthetic Data. Sensors, 22(9). https://doi.org/10.3390/s22093193
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