Combining UPerNet and ConvNeXt for Contrails Identification to reduce
Global Warming
- URL: http://arxiv.org/abs/2310.04808v1
- Date: Sat, 7 Oct 2023 13:59:05 GMT
- Title: Combining UPerNet and ConvNeXt for Contrails Identification to reduce
Global Warming
- Authors: Zhenkuan Wang
- Abstract summary: This study focuses on aircraft contrail detection in global satellite images to improve contrail models and mitigate their impact on climate change.
An innovative data preprocessing technique for NOAA GOES-16 satellite images is developed, using temperature data from the infrared channel to create false-color images, enhancing model perception.
To tackle class imbalance, the training dataset exclusively includes images with positive contrail labels.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Semantic segmentation is a critical tool in computer vision, applied in
various domains like autonomous driving and medical imaging. This study focuses
on aircraft contrail detection in global satellite images to improve contrail
models and mitigate their impact on climate change.An innovative data
preprocessing technique for NOAA GOES-16 satellite images is developed, using
brightness temperature data from the infrared channel to create false-color
images, enhancing model perception. To tackle class imbalance, the training
dataset exclusively includes images with positive contrail labels.The model
selection is based on the UPerNet architecture, implemented using the
MMsegmentation library, with the integration of two ConvNeXt configurations for
improved performance. Cross-entropy loss with positive class weights enhances
contrail recognition. Fine-tuning employs the AdamW optimizer with a learning
rate of $2.5 \times 10^{-4}$.During inference, a multi-model prediction fusion
strategy and a contrail determination threshold of 0.75 yield a binary
prediction mask. RLE encoding is used for efficient prediction result
organization.The approach achieves exceptional results, boasting a high Dice
coefficient score, placing it in the top 5\% of participating teams. This
underscores the innovative nature of the segmentation model and its potential
for enhanced contrail recognition in satellite imagery.For further exploration,
the code and models are available on GitHub:
\url{https://github.com/biluko/2023GRIC.git}.
Related papers
- Improving Interpretability and Robustness for the Detection of AI-Generated Images [6.116075037154215]
We analyze existing state-of-the-art AIGI detection methods based on frozen CLIP embeddings.
We show how to interpret them, shedding light on how images produced by various AI generators differ from real ones.
arXiv Detail & Related papers (2024-06-21T10:33:09Z) - SIRST-5K: Exploring Massive Negatives Synthesis with Self-supervised
Learning for Robust Infrared Small Target Detection [53.19618419772467]
Single-frame infrared small target (SIRST) detection aims to recognize small targets from clutter backgrounds.
With the development of Transformer, the scale of SIRST models is constantly increasing.
With a rich diversity of infrared small target data, our algorithm significantly improves the model performance and convergence speed.
arXiv Detail & Related papers (2024-03-08T16:14:54Z) - GenFace: A Large-Scale Fine-Grained Face Forgery Benchmark and Cross Appearance-Edge Learning [50.7702397913573]
The rapid advancement of photorealistic generators has reached a critical juncture where the discrepancy between authentic and manipulated images is increasingly indistinguishable.
Although there have been a number of publicly available face forgery datasets, the forgery faces are mostly generated using GAN-based synthesis technology.
We propose a large-scale, diverse, and fine-grained high-fidelity dataset, namely GenFace, to facilitate the advancement of deepfake detection.
arXiv Detail & Related papers (2024-02-03T03:13:50Z) - Transformer-based Clipped Contrastive Quantization Learning for
Unsupervised Image Retrieval [15.982022297570108]
Unsupervised image retrieval aims to learn the important visual characteristics without any given level to retrieve the similar images for a given query image.
In this paper, we propose a TransClippedCLR model by encoding the global context of an image using Transformer having local context through patch based processing.
Results using the proposed clipped contrastive learning are greatly improved on all datasets as compared to same backbone network with vanilla contrastive learning.
arXiv Detail & Related papers (2024-01-27T09:39:11Z) - DGNet: Dynamic Gradient-Guided Network for Water-Related Optics Image
Enhancement [77.0360085530701]
Underwater image enhancement (UIE) is a challenging task due to the complex degradation caused by underwater environments.
Previous methods often idealize the degradation process, and neglect the impact of medium noise and object motion on the distribution of image features.
Our approach utilizes predicted images to dynamically update pseudo-labels, adding a dynamic gradient to optimize the network's gradient space.
arXiv Detail & Related papers (2023-12-12T06:07:21Z) - Enhanced Sharp-GAN For Histopathology Image Synthesis [63.845552349914186]
Histopathology image synthesis aims to address the data shortage issue in training deep learning approaches for accurate cancer detection.
We propose a novel approach that enhances the quality of synthetic images by using nuclei topology and contour regularization.
The proposed approach outperforms Sharp-GAN in all four image quality metrics on two datasets.
arXiv Detail & Related papers (2023-01-24T17:54:01Z) - Robustifying Deep Vision Models Through Shape Sensitization [19.118696557797957]
We propose a simple, lightweight adversarial augmentation technique that explicitly incentivizes the network to learn holistic shapes.
Our augmentations superpose edgemaps from one image onto another image with shuffled patches, using a randomly determined mixing proportion.
We show that our augmentations significantly improve classification accuracy and robustness measures on a range of datasets and neural architectures.
arXiv Detail & Related papers (2022-11-14T11:17:46Z) - CARLA-GeAR: a Dataset Generator for a Systematic Evaluation of
Adversarial Robustness of Vision Models [61.68061613161187]
This paper presents CARLA-GeAR, a tool for the automatic generation of synthetic datasets for evaluating the robustness of neural models against physical adversarial patches.
The tool is built on the CARLA simulator, using its Python API, and allows the generation of datasets for several vision tasks in the context of autonomous driving.
The paper presents an experimental study to evaluate the performance of some defense methods against such attacks, showing how the datasets generated with CARLA-GeAR might be used in future work as a benchmark for adversarial defense in the real world.
arXiv Detail & Related papers (2022-06-09T09:17:38Z) - Adversarial Feature Augmentation and Normalization for Visual
Recognition [109.6834687220478]
Recent advances in computer vision take advantage of adversarial data augmentation to ameliorate the generalization ability of classification models.
Here, we present an effective and efficient alternative that advocates adversarial augmentation on intermediate feature embeddings.
We validate the proposed approach across diverse visual recognition tasks with representative backbone networks.
arXiv Detail & Related papers (2021-03-22T20:36:34Z) - Greenhouse Segmentation on High-Resolution Optical Satellite Imagery
using Deep Learning Techniques [0.0]
This paper proposes a sound methodology for pixel-wise classification on images acquired by the Azersky (SPOT-7) optical satellite.
customized variations of U-Net-like architectures are employed to identify greenhouses.
Two models are proposed which uniquely incorporate dilated convolutions and skip connections.
arXiv Detail & Related papers (2020-07-22T06:12:57Z)
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.