PDD: Post-Disaster Dataset for Human Detection and Performance Evaluation
Human detection is aimed at automatically labeling specific semantic objects in high-
resolution images, which is a key problem in the post-disaster search and rescue (SAR) …
resolution images, which is a key problem in the post-disaster search and rescue (SAR) …
Faster and Lightweight: An Improved YOLOv5 Object Detector for Remote Sensing Images
J Zhang, Z Chen, G Yan, Y Wang, B Hu - Remote Sensing, 2023 - mdpi.com
In recent years, the realm of deep learning has witnessed significant advancements,
particularly in object detection algorithms. However, the unique challenges posed by remote …
particularly in object detection algorithms. However, the unique challenges posed by remote …
SEB-YOLO: An Improved YOLOv5 Model for Remote Sensing Small Target Detection
Y Hui, S You, X Hu, P Yang, J Zhao - Sensors, 2024 - mdpi.com
Due to the limited semantic information extraction with small objects and difficulty in
distinguishing similar targets, it brings great challenges to target detection in remote sensing …
distinguishing similar targets, it brings great challenges to target detection in remote sensing …
FDiff-Fusion: Denoising diffusion fusion network based on fuzzy learning for 3D medical image segmentation
W Ding, S Geng, H Wang, J Huang, T Zhou - Information Fusion, 2024 - Elsevier
In recent years, the denoising diffusion model has achieved remarkable success in image
segmentation modeling. With its powerful nonlinear modeling capabilities and superior …
segmentation modeling. With its powerful nonlinear modeling capabilities and superior …
Re-decoupling the classification branch in object detectors for few-class scenes
J Hua, Z Wang, Q Zou, J Xiao, X Tian, Y Zhang - Pattern Recognition, 2024 - Elsevier
Few-class object detection is a critical task in numerous scenes, such as autonomous
driving and intelligent surveillance. The current researches mainly focus on the correlation …
driving and intelligent surveillance. The current researches mainly focus on the correlation …
An effective object detector via diffused graphic large selective kernel with one-to-few labelling strategy for small-scaled crop diseases detection
Amid the swift evolution of advanced technologies such as autonomous robotics, edge
computing, and the Internet of Things, Intelligent Agriculture Management Systems (IAMS) …
computing, and the Internet of Things, Intelligent Agriculture Management Systems (IAMS) …
Spatial-temporal graph Transformer for object tracking against noise spoofing interference
N Li, H Sang, J Zheng, H Ma, X Wang - Information Sciences, 2024 - Elsevier
Achieving accurate object tracking against noise spoofing interference caused by similar
backgrounds, similar objects, occlusion, or illumination variations is a challenge, especially …
backgrounds, similar objects, occlusion, or illumination variations is a challenge, especially …
CTOD: Cross-Attentive Task-Alignment for One-Stage Object Detection
R Yao, Y Rong, Q Huang… - IEEE Transactions on …, 2024 - ieeexplore.ieee.org
Existing one-stage object detectors are commonly implemented in a multi-task learning
based manner, which simultaneously solves two different sub-tasks: object classification and …
based manner, which simultaneously solves two different sub-tasks: object classification and …
PBTA: Partial Break Triplet Attention Model for Small Pedestrian Detection Based on Vehicle Camera Sensors
X Sha, Z Guo, Z Guan, W Li, S Wang… - IEEE Sensors …, 2024 - ieeexplore.ieee.org
Successfully detecting small pedestrians through vehicle camera sensors would greatly
facilitate the development of autonomous driving safety applications. However, the existing …
facilitate the development of autonomous driving safety applications. However, the existing …
Semantic Analysis System to Recognize Moving Objects by Using a Deep Learning Model
This study focuses on enhancing the accuracy and efficiency of semantic analysis systems
for recognizing moving objects within video sequences. The primary aim is to improve object …
for recognizing moving objects within video sequences. The primary aim is to improve object …