Hurdle-IMDL: An Imbalanced Learning Framework for Infrared Rainfall Retrieval
Fangjian Zhang, Xiaoyong Zhuge, Wenlan Wang, Haixia Xiao, Yuying Zhu, Siyang Cheng

TL;DR
Hurdle-IMDL is a novel framework that effectively addresses data imbalance in infrared rainfall retrieval, significantly improving the accuracy for heavy rain detection by decomposing the problem into zero inflation and long tail components.
Contribution
It introduces a divide-and-conquer approach using a hurdle model and IMDL to mitigate imbalance effects, enhancing retrieval performance for rare, high-impact rainfall events.
Findings
Outperforms conventional methods in rainfall retrieval accuracy.
Significantly improves heavy rain detection and underestimation mitigation.
Demonstrates generalizability to other environmental variable imbalances.
Abstract
Artificial intelligence has advanced quantitative remote sensing, yet its effectiveness is constrained by imbalanced label distribution. This imbalance leads conventionally trained models to favor common samples, which in turn degrades retrieval performance for rare ones. Rainfall retrieval exemplifies this issue, with performance particularly compromised for heavy rain. This study proposes Hurdle-Inversion Model Debiasing Learning (IMDL) framework. Following a divide-and-conquer strategy, imbalance in the rain distribution is decomposed into two components: zero inflation, defined by the predominance of non-rain samples; and long tail, defined by the disproportionate abundance of light-rain samples relative to heavy-rain samples. A hurdle model is adopted to handle the zero inflation, while IMDL is proposed to address the long tail by transforming the learning object into an unbiased…
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Taxonomy
TopicsPrecipitation Measurement and Analysis · Meteorological Phenomena and Simulations · Atmospheric aerosols and clouds
