Segmentation Based Approach
Segmentation-based approaches aim to partition images into meaningful regions, facilitating analysis and interpretation across diverse fields. Current research emphasizes the development and application of advanced deep learning architectures, including U-Net variants, transformers (like Mamba), and foundation models (like SAM), often combined with innovative loss functions and data augmentation techniques to address challenges such as class imbalance and limited annotated data. These methods are proving impactful in various applications, from medical image analysis (e.g., tumor detection, organ segmentation) and remote sensing (e.g., crop field mapping, flood detection) to other domains requiring precise object delineation. The ongoing focus is on improving accuracy, efficiency, and explainability, particularly in scenarios with scarce or heterogeneous data.
Papers
Evaluating Single Event Upsets in Deep Neural Networks for Semantic Segmentation: an embedded system perspective
Jon Gutiérrez-Zaballa, Koldo Basterretxea, Javier Echanobe
Point-GR: Graph Residual Point Cloud Network for 3D Object Classification and Segmentation
Md Meraz, Md Afzal Ansari, Mohammed Javed, Pavan Chakraborty
Segmentation of Coronary Artery Stenosis in X-ray Angiography using Mamba Models
Ali Rostami, Fatemeh Fouladi, Hedieh Sajedi
Multi-scale and Multi-path Cascaded Convolutional Network for Semantic Segmentation of Colorectal Polyps
Malik Abdul Manan, Feng Jinchao, Muhammad Yaqub, Shahzad Ahmed, Syed Muhammad Ali Imran, Imran Shabir Chuhan, Haroon Ahmed Khan
Initial Study On Improving Segmentation By Combining Preoperative CT And Intraoperative CBCT Using Synthetic Data
Maximilian E. Tschuchnig, Philipp Steininger, Michael Gadermayr
Epipolar Attention Field Transformers for Bird's Eye View Semantic Segmentation
Christian Witte, Jens Behley, Cyrill Stachniss, Marvin Raaijmakers
Detection, Pose Estimation and Segmentation for Multiple Bodies: Closing the Virtuous Circle
Miroslav Purkrabek, Jiri Matas
TACO: Training-free Sound Prompted Segmentation via Deep Audio-visual CO-factorization
Hugo Malard, Michel Olvera, Stephane Lathuiliere, Slim Essid
MambaU-Lite: A Lightweight Model based on Mamba and Integrated Channel-Spatial Attention for Skin Lesion Segmentation
Thi-Nhu-Quynh Nguyen, Quang-Huy Ho, Duy-Thai Nguyen, Hoang-Minh-Quang Le, Van-Truong Pham, Thi-Thao Tran
TSUBF-Net: Trans-Spatial UNet-like Network with Bi-direction Fusion for Segmentation of Adenoid Hypertrophy in CT
Rulin Zhou, Yingjie Feng, Guankun Wang, Xiaopin Zhong, Zongze Wu, Qiang Wu, Xi Zhang
A Semi-Supervised Approach with Error Reflection for Echocardiography Segmentation
Xiaoxiang Han, Yiman Liu, Jiang Shang, Qingli Li, Jiangang Chen, Menghan Hu, Qi Zhang, Yuqi Zhang, Yan Wang
SAMa: Material-aware 3D Selection and Segmentation
Michael Fischer, Iliyan Georgiev, Thibault Groueix, Vladimir G. Kim, Tobias Ritschel, Valentin Deschaintre
Track Anything Behind Everything: Zero-Shot Amodal Video Object Segmentation
Finlay G. C. Hudson, William A. P. Smith
MaskRIS: Semantic Distortion-aware Data Augmentation for Referring Image Segmentation
Minhyun Lee, Seungho Lee, Song Park, Dongyoon Han, Byeongho Heo, Hyunjung Shim
CovHuSeg: An Enhanced Approach for Kidney Pathology Segmentation
Huy Trinh, Khang Tran, Nam Nguyen, Tri Cao, Binh Nguyen
Leveraging Semantic Asymmetry for Precise Gross Tumor Volume Segmentation of Nasopharyngeal Carcinoma in Planning CT
Zi Li, Ying Chen, Zeli Chen, Yanzhou Su, Tai Ma, Tony C. W. Mok, Yan-Jie Zhou, Yunhai Bai, Zhinlin Zheng, Le Lu, Yirui Wang, Jia Ge, Xianghua Ye, Senxiang Yan, Dakai Jin
Generative Semantic Communication for Joint Image Transmission and Segmentation
Weiwen Yuan, Jinke Ren, Chongjie Wang, Ruichen Zhang, Jun Wei, Dong In Kim, Shuguang Cui