MCSDNet: Mesoscale Convective System Detection Network via Multi-scale Spatiotemporal Information
Jiajun Liang, Baoquan Zhang, Yunming Ye, Xutao Li, Chuyao Luo, Xukai, Fu

TL;DR
This paper introduces MCSDNet, a novel neural network that leverages multi-scale spatiotemporal information for mesoscale convective system detection in remote sensing imagery, outperforming existing single-frame methods.
Contribution
The paper presents the first multi-frames detection model for MCS using multi-scale spatiotemporal features and introduces a new dataset MCSRSI for this task.
Findings
MCSDNet achieves superior detection accuracy compared to baseline methods.
The multi-scale spatiotemporal module enhances feature extraction for MCS detection.
The proposed model is flexible and can incorporate various spatiotemporal modules.
Abstract
The accurate detection of Mesoscale Convective Systems (MCS) is crucial for meteorological monitoring due to their potential to cause significant destruction through severe weather phenomena such as hail, thunderstorms, and heavy rainfall. However, the existing methods for MCS detection mostly targets on single-frame detection, which just considers the static characteristics and ignores the temporal evolution in the life cycle of MCS. In this paper, we propose a novel encoder-decoder neural network for MCS detection(MCSDNet). MCSDNet has a simple architecture and is easy to expand. Different from the previous models, MCSDNet targets on multi-frames detection and leverages multi-scale spatiotemporal information for the detection of MCS regions in remote sensing imagery(RSI). As far as we know, it is the first work to utilize multi-scale spatiotemporal information to detect MCS regions.…
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Taxonomy
TopicsTime Series Analysis and Forecasting · Image and Signal Denoising Methods · Computational Physics and Python Applications
MethodsAttention Is All You Need · Dropout · Residual Connection · Softmax · Position-Wise Feed-Forward Layer · Byte Pair Encoding · Absolute Position Encodings · Linear Layer · Dense Connections · Label Smoothing
