The identification of cone photoreceptor cells is important for early diagnosing of eye diseases. We proposed automatic deep-learning cone photoreceptor cell identification on adaptive optics scanning laser ophthalmoscope images. The proposed algorithm is based on DeepLab and bias field correction. Considering manual identification as reference, our algorithm is highly effective, achieving precision, recall, and F1 score of 96.7%, 94.6%, and 95.7%, respectively. To illustrate the performance of our algorithm, we present identification results for images with different cone photoreceptor cell distributions. The experimental results show that our algorithm can achieve accurate photoreceptor cell identification on images of human retinas, whic...
Adaptive optics (AO) has enabled in vivo imaging of the living human retina with diffraction-limited...
Quantitative analysis of the cone photoreceptor mosaic in the living retina is potentially useful fo...
A fast and efficient method for quantifying photoreceptor density in images obtained with an en-face...
Purpose: To develop a fully automatic method, based on deep learning algorithms, for determining the...
Purpose: To develop a fully automatic method, based on deep learning algorithms, for determining the...
Purpose: To develop a fully automatic method, based on deep learning algorithms, for determining th...
The inclusion of adaptive optics (AO) into ophthalmic imaging technology has allowed the study of hi...
We present a robust deep learning framework for the automatic localisation of cone photoreceptor cel...
Imaging with an adaptive optics scanning light ophthalmoscope (AOSLO) enables direct visualization o...
The inclusion of adaptive optics (AO) into ophthalmic imaging technology has allowed the study of hi...
The retinal photoreceptor mosaic consists of millions of cones and rods that when struck by light pr...
The introduction of adaptive optics (AO) into vision science has made it possible for clinicians to ...
International audience<p>This article presents a photoreceptor detection algorithm ap-plied to in-vi...
Purpose: Adaptive optics imaging has enabled the visualization of photoreceptors both in health and ...
Purpose: Adaptive optics imaging has enabled the visualization of photoreceptors both in health and ...
Adaptive optics (AO) has enabled in vivo imaging of the living human retina with diffraction-limited...
Quantitative analysis of the cone photoreceptor mosaic in the living retina is potentially useful fo...
A fast and efficient method for quantifying photoreceptor density in images obtained with an en-face...
Purpose: To develop a fully automatic method, based on deep learning algorithms, for determining the...
Purpose: To develop a fully automatic method, based on deep learning algorithms, for determining the...
Purpose: To develop a fully automatic method, based on deep learning algorithms, for determining th...
The inclusion of adaptive optics (AO) into ophthalmic imaging technology has allowed the study of hi...
We present a robust deep learning framework for the automatic localisation of cone photoreceptor cel...
Imaging with an adaptive optics scanning light ophthalmoscope (AOSLO) enables direct visualization o...
The inclusion of adaptive optics (AO) into ophthalmic imaging technology has allowed the study of hi...
The retinal photoreceptor mosaic consists of millions of cones and rods that when struck by light pr...
The introduction of adaptive optics (AO) into vision science has made it possible for clinicians to ...
International audience<p>This article presents a photoreceptor detection algorithm ap-plied to in-vi...
Purpose: Adaptive optics imaging has enabled the visualization of photoreceptors both in health and ...
Purpose: Adaptive optics imaging has enabled the visualization of photoreceptors both in health and ...
Adaptive optics (AO) has enabled in vivo imaging of the living human retina with diffraction-limited...
Quantitative analysis of the cone photoreceptor mosaic in the living retina is potentially useful fo...
A fast and efficient method for quantifying photoreceptor density in images obtained with an en-face...