Ophthalmologists have used fundus images to screen and diagnose eye diseases. However, different equipments and ophthalmologists pose large variations to the quality of fundus images. Low-quality (LQ) degraded fundus images easily lead to uncertainty in clinical screening and generally increase the risk of misdiagnosis. Thus, real fundus image restoration is worth studying. Unfortunately, real clinical benchmark has not been explored for this task so far. In this paper, we investigate the real clinical fundus image restoration problem. Firstly, We establish a clinical dataset, Real Fundus (RF), including 120 low- and high-quality (HQ) image pairs. Then we propose a novel Transformer-based Generative Adversarial Network (RFormer) to restore ...
Purpose: Rare disease diagnosis is challenging in medical image-based artificial intelligence due to...
Many people lose sight due to diabetic retinopathy. The reason that diabetic retinopathy is dangerou...
To assess the performance of deep learning algorithms for different tasks in retinal fundus images: ...
Artificial intelligence technologies have been used much more often in recent years for processing i...
Fundus images captured for clinical diagnosis usually suffer from degradation factors due to variati...
People with diabetes may suffer from an eye disease called Diabetic Retinopathy (DR). This is caused...
Purpose: To assess the performance of deep learning algorithms for different tasks in retinal fundus...
Comparison of microvascular circulation on fundoscopic images is a non-invasive clinical indication ...
Eye fundus image quality represents a significant factor involved in ophthalmic screening. Usually, ...
Diabetic retinopathy (DR) is a diabetic complication affecting the eyes, which is the main cause of ...
Medical imaging datasets typically do not contain many training images, usually being deficient for ...
Background Medical datasets, especially medical images, are often imbalanced due to the different...
Herein, we present a deep learning technique to remove artifacts automatically in fundus photograph....
The ability of deep learning architectures to identify glaucomatous optic neuropathy (GON) in fundus...
International audiencePurpose: A new deep-learning based method for automatic eye fundus diagnosis u...
Purpose: Rare disease diagnosis is challenging in medical image-based artificial intelligence due to...
Many people lose sight due to diabetic retinopathy. The reason that diabetic retinopathy is dangerou...
To assess the performance of deep learning algorithms for different tasks in retinal fundus images: ...
Artificial intelligence technologies have been used much more often in recent years for processing i...
Fundus images captured for clinical diagnosis usually suffer from degradation factors due to variati...
People with diabetes may suffer from an eye disease called Diabetic Retinopathy (DR). This is caused...
Purpose: To assess the performance of deep learning algorithms for different tasks in retinal fundus...
Comparison of microvascular circulation on fundoscopic images is a non-invasive clinical indication ...
Eye fundus image quality represents a significant factor involved in ophthalmic screening. Usually, ...
Diabetic retinopathy (DR) is a diabetic complication affecting the eyes, which is the main cause of ...
Medical imaging datasets typically do not contain many training images, usually being deficient for ...
Background Medical datasets, especially medical images, are often imbalanced due to the different...
Herein, we present a deep learning technique to remove artifacts automatically in fundus photograph....
The ability of deep learning architectures to identify glaucomatous optic neuropathy (GON) in fundus...
International audiencePurpose: A new deep-learning based method for automatic eye fundus diagnosis u...
Purpose: Rare disease diagnosis is challenging in medical image-based artificial intelligence due to...
Many people lose sight due to diabetic retinopathy. The reason that diabetic retinopathy is dangerou...
To assess the performance of deep learning algorithms for different tasks in retinal fundus images: ...