Hierarchical Terrain Attention and Multi-Scale Rainfall Guidance For
Flood Image Prediction
- URL: http://arxiv.org/abs/2212.01819v2
- Date: Tue, 12 Dec 2023 07:25:02 GMT
- Title: Hierarchical Terrain Attention and Multi-Scale Rainfall Guidance For
Flood Image Prediction
- Authors: Feifei Wang, Yong Wang, Bing Li, Qidong Huang, Shaoqing Chen
- Abstract summary: We present a novel framework for precise flood map prediction, which incorporates hierarchical terrain spatial attention.
We leverage a rainfall regression loss for both the generator and the discriminator as additional supervision.
Our method greatly surpasses the previous arts under different rainfall conditions.
- Score: 14.075721797920679
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: With the deterioration of climate, the phenomenon of rain-induced flooding
has become frequent. To mitigate its impact, recent works adopt convolutional
neural network or its variants to predict the floods. However, these methods
directly force the model to reconstruct the raw pixels of flood images through
a global constraint, overlooking the underlying information contained in
terrain features and rainfall patterns. To address this, we present a novel
framework for precise flood map prediction, which incorporates hierarchical
terrain spatial attention to help the model focus on spatially-salient areas of
terrain features and constructs multi-scale rainfall embedding to extensively
integrate rainfall pattern information into generation. To better adapt the
model in various rainfall conditions, we leverage a rainfall regression loss
for both the generator and the discriminator as additional supervision.
Extensive evaluations on real catchment datasets demonstrate the superior
performance of our method, which greatly surpasses the previous arts under
different rainfall conditions.
Related papers
- A Spatiotemporal Radar-Based Precipitation Model for Water Level Prediction and Flood Forecasting [0.9487148673655145]
In July 2017, the cities of Goslar and G"ottingen experienced severe flood events characterized by short warning time of only 20 minutes.
This highlights the critical need for a more reliable and timely flood forecasting system.
arXiv Detail & Related papers (2025-03-25T10:14:54Z) - AI Driven Water Segmentation with deep learning models for Enhanced Flood Monitoring [0.0]
Flooding is a major natural hazard causing significant fatalities and economic losses annually, with increasing frequency due to climate change.
This study compares the performance of three deep learning models UNet, ResNet, and DeepLabv3 for pixelwise water segmentation to aid in flood detection, utilizing images from drones, in field observations, and social media.
arXiv Detail & Related papers (2025-01-14T17:26:02Z) - TRG-Net: An Interpretable and Controllable Rain Generator [61.2760968459789]
This study proposes a novel deep learning based rain generator, which fully takes the physical generation mechanism underlying rains into consideration.
Its significance lies in that the generator not only elaborately design essential elements of the rain to simulate expected rains, but also finely adapt to complicated and diverse practical rainy images.
Our unpaired generation experiments demonstrate that the rain generated by the proposed rain generator is not only of higher quality, but also more effective for deraining and downstream tasks.
arXiv Detail & Related papers (2024-03-15T03:27:39Z) - CasCast: Skillful High-resolution Precipitation Nowcasting via Cascaded
Modelling [93.65319031345197]
We propose CasCast, a cascaded framework composed of a deterministic and a probabilistic part to decouple predictions for mesoscale precipitation distributions and small-scale patterns.
CasCast significantly surpasses the baseline (up to +91.8%) for regional extreme-precipitation nowcasting.
arXiv Detail & Related papers (2024-02-06T08:30:47Z) - Learning Robust Precipitation Forecaster by Temporal Frame Interpolation [65.5045412005064]
We develop a robust precipitation forecasting model that demonstrates resilience against spatial-temporal discrepancies.
Our approach has led to significant improvements in forecasting precision, culminating in our model securing textit1st place in the transfer learning leaderboard of the textitWeather4cast'23 competition.
arXiv Detail & Related papers (2023-11-30T08:22:08Z) - An evaluation of deep learning models for predicting water depth
evolution in urban floods [59.31940764426359]
We compare different deep learning models for prediction of water depth at high spatial resolution.
Deep learning models are trained to reproduce the data simulated by the CADDIES cellular-automata flood model.
Our results show that the deep learning models present in general lower errors compared to the other methods.
arXiv Detail & Related papers (2023-02-20T16:08:54Z) - A Simple Baseline for Adversarial Domain Adaptation-based Unsupervised
Flood Forecasting [6.05061968456464]
Flood Domain Adaptation Network (FloodDAN) is a baseline of applying Unsupervised Domain Adaptation (UDA) to the flood forecasting problem.
FloodDAN can perform flood forecasting effectively with zero target domain supervision.
arXiv Detail & Related papers (2022-06-16T11:58:52Z) - A Generative Deep Learning Approach to Stochastic Downscaling of
Precipitation Forecasts [0.5906031288935515]
Generative adversarial networks (GANs) have been demonstrated by the computer vision community to be successful at super-resolution problems.
We show that GANs and VAE-GANs can match the statistical properties of state-of-the-art pointwise post-processing methods whilst creating high-resolution, spatially coherent precipitation maps.
arXiv Detail & Related papers (2022-04-05T07:19:42Z) - TRU-NET: A Deep Learning Approach to High Resolution Prediction of
Rainfall [21.399707529966474]
We present TRU-NET, an encoder-decoder model featuring a novel 2D cross attention mechanism between contiguous convolutional-recurrent layers.
We use a conditional-continuous loss function to capture the zero-skewed %extreme event patterns of rainfall.
Experiments show that our model consistently attains lower RMSE and MAE scores than a DL model prevalent in short term precipitation prediction.
arXiv Detail & Related papers (2020-08-20T17:27:59Z) - From Rain Generation to Rain Removal [67.71728610434698]
We build a full Bayesian generative model for rainy image where the rain layer is parameterized as a generator.
We employ the variational inference framework to approximate the expected statistical distribution of rainy image.
Comprehensive experiments substantiate that the proposed model can faithfully extract the complex rain distribution.
arXiv Detail & Related papers (2020-08-08T18:56:51Z) - Structural Residual Learning for Single Image Rain Removal [48.87977695398587]
This study proposes a new network architecture by enforcing the output residual of the network possess intrinsic rain structures.
Such a structural residual setting guarantees the rain layer extracted by the network finely comply with the prior knowledge of general rain streaks.
arXiv Detail & Related papers (2020-05-19T05:52:13Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.