Parallel implementations to accelerate the autofocus process in microscopy applications.
Juan C Valdiviezo-NFrancisco J Hernandez-LopezCarina Toxqui-QuitlPublished in: Journal of medical imaging (Bellingham, Wash.) (2020)
Several autofocus algorithms based on the analysis of image sharpness have been proposed for microscopy applications. Since autofocus functions (AFs) are computed from several images captured at different lens positions, these algorithms are considered computationally intensive. With the aim of presenting the capabilities of dedicated hardware to speed-up the autofocus process, we discuss the implementation of four AFs using, respectively, a multicore central processing unit (CPU) architecture and a graphic processing unit (GPU) card. Throughout different experiments performed on 300 image stacks previously identified with tuberculosis bacilli, the proposed implementations have allowed for the acceleration of the computation time for some AFs up to 23 times with respect to the serial version. These results show that the optimal use of multicore CPU and GPUs can be used effectively for autofocus in real-time microscopy applications.
Keyphrases
- deep learning
- single molecule
- optical coherence tomography
- high resolution
- machine learning
- high speed
- high throughput
- label free
- convolutional neural network
- healthcare
- primary care
- mycobacterium tuberculosis
- magnetic resonance imaging
- pulmonary tuberculosis
- computed tomography
- mass spectrometry
- quality improvement
- case report
- hiv aids
- human immunodeficiency virus
- cataract surgery
- electronic health record
- adverse drug