FloodLense: A Framework for ChatGPT-based Real-time Flood Detection
- URL: http://arxiv.org/abs/2401.15501v1
- Date: Sat, 27 Jan 2024 20:52:33 GMT
- Title: FloodLense: A Framework for ChatGPT-based Real-time Flood Detection
- Authors: Pranath Reddy Kumbam, Kshitij Maruti Vejre
- Abstract summary: This study addresses the vital issue of real-time flood detection and management.
It innovatively combines advanced deep learning models with Large language models (LLM), enhancing flood monitoring and response capabilities.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This study addresses the vital issue of real-time flood detection and
management. It innovatively combines advanced deep learning models with Large
language models (LLM), enhancing flood monitoring and response capabilities.
This approach addresses the limitations of current methods by offering a more
accurate, versatile, user-friendly and accessible solution. The integration of
UNet, RDN, and ViT models with natural language processing significantly
improves flood area detection in diverse environments, including using aerial
and satellite imagery. The experimental evaluation demonstrates the models'
efficacy in accurately identifying and mapping flood zones, showcasing the
project's potential in transforming environmental monitoring and disaster
management fields.
Related papers
- Learning Underwater Active Perception in Simulation [51.205673783866146]
Turbidity can jeopardise the whole mission as it may prevent correct visual documentation of the inspected structures.
Previous works have introduced methods to adapt to turbidity and backscattering.
We propose a simple yet efficient approach to enable high-quality image acquisition of assets in a broad range of water conditions.
arXiv Detail & Related papers (2025-04-23T06:48:38Z) - Inland Waterway Object Detection in Multi-environment: Dataset and Approach [12.00732943849236]
This paper introduces the Multi-environment Inland Waterway Vessel dataset (MEIWVD)
MEIWVD comprises 32,478 high-quality images from diverse scenarios, including sunny, rainy, foggy, and artificial lighting conditions.
This paper proposes a scene-guided image enhancement module to improve water surface images based on environmental conditions adaptively.
arXiv Detail & Related papers (2025-04-07T08:45:00Z) - Image-Based Relocalization and Alignment for Long-Term Monitoring of Dynamic Underwater Environments [57.59857784298534]
We propose an integrated pipeline that combines Visual Place Recognition (VPR), feature matching, and image segmentation on video-derived images.
This method enables robust identification of revisited areas, estimation of rigid transformations, and downstream analysis of ecosystem changes.
arXiv Detail & Related papers (2025-03-06T05:13:19Z) - 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) - Underwater Object Detection in the Era of Artificial Intelligence: Current, Challenge, and Future [119.88454942558485]
Underwater object detection (UOD) aims to identify and localise objects in underwater images or videos.
In recent years, artificial intelligence (AI) based methods, especially deep learning methods, have shown promising performance in UOD.
arXiv Detail & Related papers (2024-10-08T00:25:33Z) - Improving Interpretability of Deep Active Learning for Flood Inundation Mapping Through Class Ambiguity Indices Using Multi-spectral Satellite Imagery [1.842368798362815]
Flood inundation mapping is a critical task for responding to the increasing risk of flooding linked to global warming.
To cope with the time-consuming and labor-intensive data labeling process in supervised learning, deep active learning strategies are one of the feasible approaches.
We introduce a novel framework of Interpretable Deep Active Learning for Flood inundation Mapping (IDAL-FIM)
arXiv Detail & Related papers (2024-04-29T18:33:17Z) - Research on Detection of Floating Objects in River and Lake Based on AI Intelligent Image Recognition [12.315852697312195]
This study focuses on the detection of floating objects in river and lake environments, exploring an innovative approach based on deep learning.
The proposed system has demonstrated its ability to significantly enhance the accuracy and efficiency of debris detection, thus offering a new technological avenue for water quality monitoring in rivers and lakes.
arXiv Detail & Related papers (2024-04-10T10:13:37Z) - ADOD: Adaptive Domain-Aware Object Detection with Residual Attention for
Underwater Environments [1.2624532490634643]
This research presents ADOD, a novel approach to address domain generalization in underwater object detection.
Our method enhances the model's ability to generalize across diverse and unseen domains, ensuring robustness in various underwater environments.
arXiv Detail & Related papers (2023-12-11T19:20:56Z) - AMSP-UOD: When Vortex Convolution and Stochastic Perturbation Meet
Underwater Object Detection [40.532331552038485]
We present a novel Amplitude-Modulated Perturbation and Vortex Convolutional Network, AMSP-UOD.
AMSP-UOD addresses the impact of non-ideal imaging factors on detection accuracy in complex underwater environments.
Our method outperforms existing state-of-the-art methods in terms of accuracy and noise immunity.
arXiv Detail & Related papers (2023-08-23T05:03:45Z) - MonoTDP: Twin Depth Perception for Monocular 3D Object Detection in
Adverse Scenes [49.21187418886508]
This paper proposes a monocular 3D detection model designed to perceive twin depth in adverse scenes, termed MonoTDP.
We first introduce an adaptive learning strategy to aid the model in handling uncontrollable weather conditions, significantly resisting degradation caused by various degrading factors.
Then, to address the depth/content loss in adverse regions, we propose a novel twin depth perception module that simultaneously estimates scene and object depth.
arXiv Detail & Related papers (2023-05-18T13:42:02Z) - 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) - Visual-Language Navigation Pretraining via Prompt-based Environmental
Self-exploration [83.96729205383501]
We introduce prompt-based learning to achieve fast adaptation for language embeddings.
Our model can adapt to diverse vision-language navigation tasks, including VLN and REVERIE.
arXiv Detail & Related papers (2022-03-08T11:01:24Z) - Cycle and Semantic Consistent Adversarial Domain Adaptation for Reducing
Simulation-to-Real Domain Shift in LiDAR Bird's Eye View [110.83289076967895]
We present a BEV domain adaptation method based on CycleGAN that uses prior semantic classification in order to preserve the information of small objects of interest during the domain adaptation process.
The quality of the generated BEVs has been evaluated using a state-of-the-art 3D object detection framework at KITTI 3D Object Detection Benchmark.
arXiv Detail & Related papers (2021-04-22T12:47:37Z) - Breaking the Limits of Remote Sensing by Simulation and Deep Learning
for Flood and Debris Flow Mapping [13.167695669500391]
We propose a framework that estimates inundation depth and debris-flow-induced topographic deformation from remote sensing imagery.
A water and debris flow simulator generates training data for various artificial disaster scenarios.
We show that regression models based on Attention U-Net and LinkNet architectures trained on such synthetic data can predict the maximum water level and topographic deformation.
arXiv Detail & Related papers (2020-06-09T10:59:15Z) - Neural Topological SLAM for Visual Navigation [112.73876869904]
We design topological representations for space that leverage semantics and afford approximate geometric reasoning.
We describe supervised learning-based algorithms that can build, maintain and use such representations under noisy actuation.
arXiv Detail & Related papers (2020-05-25T17:56:29Z) - Counterfactual Vision-and-Language Navigation via Adversarial Path Sampling [65.99956848461915]
Vision-and-Language Navigation (VLN) is a task where agents must decide how to move through a 3D environment to reach a goal.
One of the problems of the VLN task is data scarcity since it is difficult to collect enough navigation paths with human-annotated instructions for interactive environments.
We propose an adversarial-driven counterfactual reasoning model that can consider effective conditions instead of low-quality augmented data.
arXiv Detail & Related papers (2019-11-17T18:02:51Z)
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.