Aerial Flood Scene Classification Using Fine-Tuned Attention-based Architecture for Flood-Prone Countries in South Asia
- URL: http://arxiv.org/abs/2411.00169v1
- Date: Thu, 31 Oct 2024 19:23:43 GMT
- Title: Aerial Flood Scene Classification Using Fine-Tuned Attention-based Architecture for Flood-Prone Countries in South Asia
- Authors: Ibne Hassan, Aman Mujahid, Abdullah Al Hasib, Andalib Rahman Shagoto, Joyanta Jyoti Mondal, Meem Arafat Manab, Jannatun Noor,
- Abstract summary: We create a new dataset collecting aerial imagery of flooding events across South Asian countries.
For the classification, we propose a fine-tuned Compact Convolutional Transformer (CCT) based approach.
We also implement the YOLOv8 object detection model and detect houses and humans within the imagery.
- Score: 0.953693516244499
- License:
- Abstract: Countries in South Asia experience many catastrophic flooding events regularly. Through image classification, it is possible to expedite search and rescue initiatives by classifying flood zones, including houses and humans. We create a new dataset collecting aerial imagery of flooding events across South Asian countries. For the classification, we propose a fine-tuned Compact Convolutional Transformer (CCT) based approach and some other cutting-edge transformer-based and Convolutional Neural Network-based architectures (CNN). We also implement the YOLOv8 object detection model and detect houses and humans within the imagery of our proposed dataset, and then compare the performance with our classification-based approach. Since the countries in South Asia have similar topography, housing structure, the color of flood water, and vegetation, this work can be more applicable to such a region as opposed to the rest of the world. The images are divided evenly into four classes: 'flood', 'flood with domicile', 'flood with humans', and 'no flood'. After experimenting with our proposed dataset on our fine-tuned CCT model, which has a comparatively lower number of weight parameters than many other transformer-based architectures designed for computer vision, it exhibits an accuracy and macro average precision of 98.62% and 98.50%. The other transformer-based architectures that we implement are the Vision Transformer (ViT), Swin Transformer, and External Attention Transformer (EANet), which give an accuracy of 88.66%, 84.74%, and 66.56% respectively. We also implement DCECNN (Deep Custom Ensembled Convolutional Neural Network), which is a custom ensemble model that we create by combining MobileNet, InceptionV3, and EfficientNetB0, and we obtain an accuracy of 98.78%. The architectures we implement are fine-tuned to achieve optimal performance on our dataset.
Related papers
- On Vision Transformers for Classification Tasks in Side-Scan Sonar Imagery [0.0]
Side-scan sonar (SSS) imagery presents unique challenges in the classification of man-made objects on the seafloor.
This paper rigorously compares the performance of ViT models alongside commonly used CNN architectures for binary classification tasks in SSS imagery.
ViT-based models exhibit superior classification performance across f1-score, precision, recall, and accuracy metrics.
arXiv Detail & Related papers (2024-09-18T14:36:50Z) - Boosting Cross-Domain Point Classification via Distilling Relational Priors from 2D Transformers [59.0181939916084]
Traditional 3D networks mainly focus on local geometric details and ignore the topological structure between local geometries.
We propose a novel Priors Distillation (RPD) method to extract priors from the well-trained transformers on massive images.
Experiments on the PointDA-10 and the Sim-to-Real datasets verify that the proposed method consistently achieves the state-of-the-art performance of UDA for point cloud classification.
arXiv Detail & Related papers (2024-07-26T06:29:09Z) - DAM-Net: Global Flood Detection from SAR Imagery Using Differential
Attention Metric-Based Vision Transformers [22.885444177106873]
Detection of flooded areas using high-resolution synthetic aperture radar (SAR) imagery is a critical task with applications in crisis and disaster management.
To address this issue, we propose a novel differential attention metric-based network (DAM-Net) in this study.
The DAM-Net comprises two key components: a weight-sharing Siamese backbone to obtain multi-scale change features of multi-temporal images and tokens containing high-level semantic information of water-body changes.
arXiv Detail & Related papers (2023-06-01T14:12:33Z) - Magic ELF: Image Deraining Meets Association Learning and Transformer [63.761812092934576]
This paper aims to unify CNN and Transformer to take advantage of their learning merits for image deraining.
A novel multi-input attention module (MAM) is proposed to associate rain removal and background recovery.
Our proposed method (dubbed as ELF) outperforms the state-of-the-art approach (MPRNet) by 0.25 dB on average.
arXiv Detail & Related papers (2022-07-21T12:50:54Z) - Global Context Vision Transformers [78.5346173956383]
We propose global context vision transformer (GC ViT), a novel architecture that enhances parameter and compute utilization for computer vision.
We address the lack of the inductive bias in ViTs, and propose to leverage a modified fused inverted residual blocks in our architecture.
Our proposed GC ViT achieves state-of-the-art results across image classification, object detection and semantic segmentation tasks.
arXiv Detail & Related papers (2022-06-20T18:42:44Z) - Stereoscopic Universal Perturbations across Different Architectures and
Datasets [60.021985610201156]
We study the effect of adversarial perturbations of images on deep stereo matching networks for the disparity estimation task.
We present a method to craft a single set of perturbations that, when added to any stereo image pair in a dataset, can fool a stereo network.
Our perturbations can increase D1-error (akin to fooling rate) of state-of-the-art stereo networks from 1% to as much as 87%.
arXiv Detail & Related papers (2021-12-12T02:11:31Z) - Forward-Looking Sonar Patch Matching: Modern CNNs, Ensembling, and
Uncertainty [0.0]
Convolutional Neural Network (CNN) learns a similarity function and predicts if two input sonar images are similar or not.
Best performing models are DenseNet Two-Channel network with 0.955 AUC, VGG-Siamese with contrastive loss at 0.949 AUC and DenseNet Siamese with 0.921 AUC.
arXiv Detail & Related papers (2021-08-02T17:49:56Z) - Continental-Scale Building Detection from High Resolution Satellite
Imagery [5.56205296867374]
We study variations in architecture, loss functions, regularization, pre-training, self-training and post-processing that increase instance segmentation performance.
Experiments were carried out using a dataset of 100k satellite images across Africa containing 1.75M manually labelled building instances.
We report novel methods for improving performance of building detection with this type of model, including the use of mixup.
arXiv Detail & Related papers (2021-07-26T15:48:14Z) - GANav: Group-wise Attention Network for Classifying Navigable Regions in
Unstructured Outdoor Environments [54.21959527308051]
We present a new learning-based method for identifying safe and navigable regions in off-road terrains and unstructured environments from RGB images.
Our approach consists of classifying groups of terrain classes based on their navigability levels using coarse-grained semantic segmentation.
We show through extensive evaluations on the RUGD and RELLIS-3D datasets that our learning algorithm improves the accuracy of visual perception in off-road terrains for navigation.
arXiv Detail & Related papers (2021-03-07T02:16:24Z) - Seismic Facies Analysis: A Deep Domain Adaptation Approach [6.494634150546026]
Deep neural networks (DNNs) can learn accurately from large quantities of labeled input data, but often fail to do so when labelled data are scarce.
In the present study, experiments are performed on seismic images of the F3 block 3D dataset from offshore Netherlands (source domain; SD) and Penobscot 3D survey data from Canada (target domain; TD)
A deep neural network architecture named EarthAdaptNet (EAN) is proposed to semantically segment the seismic images when few classes have data scarcity.
arXiv Detail & Related papers (2020-11-20T17:09:06Z) - R-FCN: Object Detection via Region-based Fully Convolutional Networks [87.62557357527861]
We present region-based, fully convolutional networks for accurate and efficient object detection.
Our result is achieved at a test-time speed of 170ms per image, 2.5-20x faster than the Faster R-CNN counterpart.
arXiv Detail & Related papers (2016-05-20T15:50:11Z)
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.