We describe a deep learning system for satellite image segmentation. Our CNN model embeds contextual feature dependencies in both spatial and frequency domains. Its Spatial Weighting Module uses a multi-scale pooling ...
详细信息
ISBN:
(纸本)9781728198354
We describe a deep learning system for satellite image segmentation. Our CNN model embeds contextual feature dependencies in both spatial and frequency domains. Its Spatial Weighting Module uses a multi-scale pooling layer to represent correlations at longer length scales in the spatial domain. Its Frequency Weighting Module uses frequency-domain information to better discriminate between object classes. Experimental results on the Potsdam dataset demonstrate that our model has a 1.9% higher average F1 accuracy than previous methods.
remotesensing technology plays an important role in many tasks such as natural disaster detection, weather and climate monitoring and military defense. Currently, remotesensingimageprocessing predominantly relies ...
详细信息
Semantic segmentation is crucial in remotesensingimageprocessing. In recent years, semantic segmentation using optical and SAR images for multi-modal fusion is gaining attention for its good results. The current re...
详细信息
The extraction of building locations is crucial in the field of remotesensing, commonly applied in tasks such as emergency response, urban planning, and environmental monitoring. Existing methods often employ convolu...
详细信息
The dominant method of processing sonar data is using image-based representations, requiring the preprocessing of image data on autonomous systems. We propose an alternative data processing method for remotesensing a...
详细信息
A novel Transfer-Active Learning-Driven Siamese network for bi-temporal image classification (TALDS) is proposed. It incorporates transfer learning (TL) and active learning (AL) techniques to facilitate the selection ...
详细信息
ISBN:
(纸本)9798350351491;9798350351484
A novel Transfer-Active Learning-Driven Siamese network for bi-temporal image classification (TALDS) is proposed. It incorporates transfer learning (TL) and active learning (AL) techniques to facilitate the selection of informative samples in an iterative process. This approach allows the model to learn from different domains efficiently, improving its accuracy and robustness. TALDS network shows promising results for bi-temporal image classification tasks and is therefore a valuable contribution to computer vision. The Siamese network architecture enables the network to learn to extract coherent features from bi-temporal images, allowing for accurate image classification. Experimental results demonstrate the effectiveness of our framework in detecting desertification using satellite images. The proposed method offers numerous possibilities for implementation in different domains, including environmental monitoring and remotesensing.
With the rapid development of remotesensing technology, remotesensingimages play an important role in the agricultural field, geological field, and natural disaster detection. The size of aircraft in complex scenes...
详细信息
Hyperspectral imaging technology offers significant advantages in remotesensing, capturing richer and more detailed spectral information in narrower bands compared to multispectral images. This makes it highly effect...
详细信息
The substantial scale variation and intra-class diversity within remotesensingimagery pose significant challenges for semantic segmentation, rendering methods developed for natural images inapplicable. These challen...
详细信息
We come up with a novel application for image analysis methods in the context of direction dependent signal characteristics. For this purpose, we describe an inpainting approach adding benefit to technical signal info...
详细信息
ISBN:
(纸本)9789464593617;9798331519773
We come up with a novel application for image analysis methods in the context of direction dependent signal characteristics. For this purpose, we describe an inpainting approach adding benefit to technical signal information which are typically only used for monitoring and control purposes in ground station operations. Recalling the theoretical properties of the employed inpainting technique and appropriate modeling allow us to demonstrate the usefulness of our approach for satellite data reception quality assessment. In our application, we show the advantages of inpainting products over raw data as well as the rich potential of the visualization of technical signal information.
暂无评论