Artificial intelligence(AI)is an emerging field in which computerized systems are used to carry out complex tasks in place of humans.Medical AI algorithms have been developed for disease diagnosis and prediction and t...Artificial intelligence(AI)is an emerging field in which computerized systems are used to carry out complex tasks in place of humans.Medical AI algorithms have been developed for disease diagnosis and prediction and treatment recommendation across various clinical data types,e.g.,chest X-rays,electrocardiograms,and other radiological images.1 In ophthalmology,particularly,great progress has been made in AI systems over the past decade.Color fundus photography(CFP)and optical coherence tomography(OCT),which are readily available in routine clinical practice,are both mainstream and useful retinal imaging modalities in ophthalmology.In September 2023,the 2023 Lasker-Debakey Clinical Medical Research Award was awarded to three scientists for their work on OCT for accurate retinal disease detection.展开更多
Salient object detection(SOD)is a long-standing research topic in computer vision with increasing interest in the past decade.Since light fields record comprehensive information of natural scenes that benefit SOD in a...Salient object detection(SOD)is a long-standing research topic in computer vision with increasing interest in the past decade.Since light fields record comprehensive information of natural scenes that benefit SOD in a number of ways,using light field inputs to improve saliency detection over conventional RGB inputs is an emerging trend.This paper provides the first comprehensive review and a benchmark for light field SOD,which has long been lacking in the saliency community.Firstly,we introduce light fields,including theory and data forms,and then review existing studies on light field SOD,covering ten traditional models,seven deep learning-based models,a comparative study,and a brief review.Existing datasets for light field SOD are also summarized.Secondly,we benchmark nine representative light field SOD models together with several cutting-edge RGB-D SOD models on four widely used light field datasets,providing insightful discussions and analyses,including a comparison between light field SOD and RGB-D SOD models.Due to the inconsistency of current datasets,we further generate complete data and supplement focal stacks,depth maps,and multi-view images for them,making them consistent and uniform.Our supplemental data make a universal benchmark possible.Lastly,light field SOD is a specialised problem,because of its diverse data representations and high dependency on acquisition hardware,so it differs greatly from other saliency detection tasks.We provide nine observations on challenges and future directions,and outline several open issues.All the materials including models,datasets,benchmarking results,and supplemented light field datasets are publicly available at https://github.com/kerenfu/LFSOD-Survey.展开更多
基金This work was supported by the National Natural Science Foundation of China(82200961)the Science and Technology Commission of Shanghai(20DZ2270800)+1 种基金the Shanghai Key Laboratory of Orbital Diseases and Ocular Oncology(2022SKLE-KFKT004)the China Postdoctoral Science Foundation(2022M720091,2023M741708,2023TQ0159,and GZC20233503)。
文摘Artificial intelligence(AI)is an emerging field in which computerized systems are used to carry out complex tasks in place of humans.Medical AI algorithms have been developed for disease diagnosis and prediction and treatment recommendation across various clinical data types,e.g.,chest X-rays,electrocardiograms,and other radiological images.1 In ophthalmology,particularly,great progress has been made in AI systems over the past decade.Color fundus photography(CFP)and optical coherence tomography(OCT),which are readily available in routine clinical practice,are both mainstream and useful retinal imaging modalities in ophthalmology.In September 2023,the 2023 Lasker-Debakey Clinical Medical Research Award was awarded to three scientists for their work on OCT for accurate retinal disease detection.
基金supported by the National Natural Science Foundation of China(Nos.62176169 and 61703077)SCU-Luzhou Municipal People's Government Strategic Cooperation Projetc(t No.2020CDLZ-10)+1 种基金supported by the National Natural Science Foundation of China(No.62172228)supported by the National Natural Science Foundation of China(No.61773270).
文摘Salient object detection(SOD)is a long-standing research topic in computer vision with increasing interest in the past decade.Since light fields record comprehensive information of natural scenes that benefit SOD in a number of ways,using light field inputs to improve saliency detection over conventional RGB inputs is an emerging trend.This paper provides the first comprehensive review and a benchmark for light field SOD,which has long been lacking in the saliency community.Firstly,we introduce light fields,including theory and data forms,and then review existing studies on light field SOD,covering ten traditional models,seven deep learning-based models,a comparative study,and a brief review.Existing datasets for light field SOD are also summarized.Secondly,we benchmark nine representative light field SOD models together with several cutting-edge RGB-D SOD models on four widely used light field datasets,providing insightful discussions and analyses,including a comparison between light field SOD and RGB-D SOD models.Due to the inconsistency of current datasets,we further generate complete data and supplement focal stacks,depth maps,and multi-view images for them,making them consistent and uniform.Our supplemental data make a universal benchmark possible.Lastly,light field SOD is a specialised problem,because of its diverse data representations and high dependency on acquisition hardware,so it differs greatly from other saliency detection tasks.We provide nine observations on challenges and future directions,and outline several open issues.All the materials including models,datasets,benchmarking results,and supplemented light field datasets are publicly available at https://github.com/kerenfu/LFSOD-Survey.