Due to differences in sensor characteristics, imaging conditions, and time among multi-source remotesensingimages, nonlinear changes in image radiance intensity occur, increasing the difficulty of image registration...
详细信息
remotesensingimage Change Captioning (RSICC) is a task that utilizes natural language to describe changes in remotesensingimages of the same area captured at different times. However, the significant temporal inte...
详细信息
To address the increased complexity of surface cover, increased heterogeneity within homogeneous regions, and increased similarity between different regions in high-resolution remotesensingimages, which lead to incr...
详细信息
Because of the convenience and low cost of obtaining visible remotesensingimages of UAv, it is widely used in agricultural production. In land cover classification, in order to obtain more homogeneous superpixels of...
详细信息
In order to cope with the problems of high target complexity, scale diversity, different resolutions and limited hardware resources in remotesensingimage target detection, a lightweight and multi-modal remote sensin...
详细信息
ISBN:
(纸本)9798350349122;9798350349115
In order to cope with the problems of high target complexity, scale diversity, different resolutions and limited hardware resources in remotesensingimage target detection, a lightweight and multi-modal remotesensingimage target detection algorithm is proposed. The traditional convolutional layer (Conv) in the YOLOv8 network is replaced with GhostNet v2, which ensures the detection accuracy while achieving a lightweight network model;a Dual-Modal Fusion module (DMF) is built in the backbone network to integrate pixel-level RGB and IR modes to extract complementary information to enrich network feature information;the lightweight Efficient Channel Attention Mechanism (ECA) is introduced in the DFM module to ensure the lightweight of the model while alleviating channel information imbalance and improving the performance of target detection. The improved algorithm YOLOv8-LD achieved 89.5% mAP50, 16.3M Params, and 34.3G FLOPs on the DIOR data set. Experimental results on DOTA, NWPU and DIOR data sets show that compared with other algorithms, the proposed YOLOv8-LD algorithm achieves lightweight while improving detection accuracy.
In recent years, weakly supervised semantic segmentation has emerged as a prominent research topic in the field of remotesensingimage semantic segmentation due to its cost-effective labeling advantages. However, the...
详细信息
In recent years, with the rapid development of hyperspectral remotesensing technology, hyperspectral remotesensing data has witnessed progressive utilization in the subway transportation industry. Due to the large a...
详细信息
Guizhou Province, situated in the southwest of China, boasts diverse and complex geographical environments and abundant forest resources. However, it faces threats from natural disasters like forest fires. Accurate es...
详细信息
The process of multi-modal image registration is fundamental in remotesensing and visual navigation applications. However, existing image registration methods that are designed for single modality images do not provi...
详细信息
ISBN:
(纸本)9798350343557
The process of multi-modal image registration is fundamental in remotesensing and visual navigation applications. However, existing image registration methods that are designed for single modality images do not provide satisfactory results when applied to multi-modal image registration. In this research, our objective is to achieve highly accurate alignment of both infrared and optical (visible range) images. To accomplish this goal, we explore the effectiveness of the Swin Transformer encoder and cosine loss in enhancing the keypoint-based image registration process. Simulation results show the improvement achieved in multi-modal registration by using a transformer based Siamese network.
Self-supervised learning aims to learn applicable pre-trained models from massive unlabeled data. Besides image-level pretext tasks, many recent pixel-level studies have been pro-posed to learn dense information in ea...
详细信息
暂无评论