RVD: A Handheld Device-Based Fundus Video Dataset for Retinal Vessel
Segmentation
- URL: http://arxiv.org/abs/2307.06577v1
- Date: Thu, 13 Jul 2023 06:30:09 GMT
- Title: RVD: A Handheld Device-Based Fundus Video Dataset for Retinal Vessel
Segmentation
- Authors: MD Wahiduzzaman Khan, Hongwei Sheng, Hu Zhang, Heming Du, Sen Wang,
Minas Theodore Coroneo, Farshid Hajati, Sahar Shariflou, Michael Kalloniatis,
Jack Phu, Ashish Agar, Zi Huang, Mojtaba Golzan, Xin Yu
- Abstract summary: We introduce the first video-based retinal dataset by employing handheld devices for data acquisition.
The dataset comprises 635 smartphone-based fundus videos collected from four different clinics, involving 415 patients from 50 to 75 years old.
- Score: 42.145795119000056
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Retinal vessel segmentation is generally grounded in image-based datasets
collected with bench-top devices. The static images naturally lose the dynamic
characteristics of retina fluctuation, resulting in diminished dataset
richness, and the usage of bench-top devices further restricts dataset
scalability due to its limited accessibility. Considering these limitations, we
introduce the first video-based retinal dataset by employing handheld devices
for data acquisition. The dataset comprises 635 smartphone-based fundus videos
collected from four different clinics, involving 415 patients from 50 to 75
years old. It delivers comprehensive and precise annotations of retinal
structures in both spatial and temporal dimensions, aiming to advance the
landscape of vasculature segmentation. Specifically, the dataset provides three
levels of spatial annotations: binary vessel masks for overall retinal
structure delineation, general vein-artery masks for distinguishing the vein
and artery, and fine-grained vein-artery masks for further characterizing the
granularities of each artery and vein. In addition, the dataset offers temporal
annotations that capture the vessel pulsation characteristics, assisting in
detecting ocular diseases that require fine-grained recognition of hemodynamic
fluctuation. In application, our dataset exhibits a significant domain shift
with respect to data captured by bench-top devices, thus posing great
challenges to existing methods. In the experiments, we provide evaluation
metrics and benchmark results on our dataset, reflecting both the potential and
challenges it offers for vessel segmentation tasks. We hope this challenging
dataset would significantly contribute to the development of eye disease
diagnosis and early prevention.
Related papers
- CathFlow: Self-Supervised Segmentation of Catheters in Interventional Ultrasound Using Optical Flow and Transformers [66.15847237150909]
We introduce a self-supervised deep learning architecture to segment catheters in longitudinal ultrasound images.
The network architecture builds upon AiAReSeg, a segmentation transformer built with the Attention in Attention mechanism.
We validated our model on a test dataset, consisting of unseen synthetic data and images collected from silicon aorta phantoms.
arXiv Detail & Related papers (2024-03-21T15:13:36Z) - Adaptive Semi-Supervised Segmentation of Brain Vessels with Ambiguous
Labels [63.415444378608214]
Our approach incorporates innovative techniques including progressive semi-supervised learning, adaptative training strategy, and boundary enhancement.
Experimental results on 3DRA datasets demonstrate the superiority of our method in terms of mesh-based segmentation metrics.
arXiv Detail & Related papers (2023-08-07T14:16:52Z) - GastroVision: A Multi-class Endoscopy Image Dataset for Computer Aided
Gastrointestinal Disease Detection [6.231109933741383]
This dataset includes different anatomical landmarks, pathological abnormalities, polyp removal cases and normal findings from the GI tract.
It was annotated and verified by experienced GI endoscopists.
We believe our dataset can facilitate the development of AI-based algorithms for GI disease detection and classification.
arXiv Detail & Related papers (2023-07-16T19:36:03Z) - Affinity Feature Strengthening for Accurate, Complete and Robust Vessel
Segmentation [48.638327652506284]
Vessel segmentation is crucial in many medical image applications, such as detecting coronary stenoses, retinal vessel diseases and brain aneurysms.
We present a novel approach, the affinity feature strengthening network (AFN), which jointly models geometry and refines pixel-wise segmentation features using a contrast-insensitive, multiscale affinity approach.
arXiv Detail & Related papers (2022-11-12T05:39:17Z) - RAVIR: A Dataset and Methodology for the Semantic Segmentation and
Quantitative Analysis of Retinal Arteries and Veins in Infrared Reflectance
Imaging [7.316426736150123]
We present a novel dataset, dubbed RAVIR, for the semantic segmentation of Retinal Arteries and Veins in Infrared Reflectance (IR) imaging.
We propose a novel deep learning-based methodology, denoted as SegRAVIR, for the semantic segmentation of retinal arteries and veins.
Our experiments validate the effectiveness of SegRAVIR and demonstrate its superior performance in comparison to state-of-the-art models.
arXiv Detail & Related papers (2022-03-28T17:30:29Z) - FetReg: Placental Vessel Segmentation and Registration in Fetoscopy
Challenge Dataset [57.30136148318641]
Fetoscopy laser photocoagulation is a widely used procedure for the treatment of Twin-to-Twin Transfusion Syndrome (TTTS)
This may lead to increased procedural time and incomplete ablation, resulting in persistent TTTS.
Computer-assisted intervention may help overcome these challenges by expanding the fetoscopic field of view through video mosaicking and providing better visualization of the vessel network.
We present a large-scale multi-centre dataset for the development of generalized and robust semantic segmentation and video mosaicking algorithms for the fetal environment with a focus on creating drift-free mosaics from long duration fetoscopy videos.
arXiv Detail & Related papers (2021-06-10T17:14:27Z) - Transfer Learning Through Weighted Loss Function and Group Normalization
for Vessel Segmentation from Retinal Images [0.0]
The vascular structure of blood vessels is important in diagnosing retinal conditions such as glaucoma and diabetic retinopathy.
We propose an approach for segmenting retinal vessels that uses deep learning along with transfer learning.
Our approach results in greater segmentation accuracy than other approaches.
arXiv Detail & Related papers (2020-12-16T20:34:48Z) - Multi-Task Neural Networks with Spatial Activation for Retinal Vessel
Segmentation and Artery/Vein Classification [49.64863177155927]
We propose a multi-task deep neural network with spatial activation mechanism to segment full retinal vessel, artery and vein simultaneously.
The proposed network achieves pixel-wise accuracy of 95.70% for vessel segmentation, and A/V classification accuracy of 94.50%, which is the state-of-the-art performance for both tasks.
arXiv Detail & Related papers (2020-07-18T05:46:47Z) - EndoSLAM Dataset and An Unsupervised Monocular Visual Odometry and Depth
Estimation Approach for Endoscopic Videos: Endo-SfMLearner [10.341552258136572]
We introduce a comprehensive endoscopic SLAM dataset consisting of 3D point cloud data for six porcine organs.
A synthetic capsule endoscopy frame with both depth and pose annotations is included to facilitate the study of simulation-to-real transfer learning algorithms.
We propound Endo-SfMLearner, an unsupervised monocular depth and pose estimation method.
arXiv Detail & Related papers (2020-06-30T10:43:27Z) - Improving Robustness using Joint Attention Network For Detecting Retinal
Degeneration From Optical Coherence Tomography Images [0.0]
We propose the use of disease-specific feature representation as a novel architecture comprised of two joint networks.
Our experimental results on publicly available datasets show the proposed joint-network significantly improves the accuracy and robustness of state-of-the-art retinal disease classification networks on unseen datasets.
arXiv Detail & Related papers (2020-05-16T20:32:49Z)
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.