• No results found

Applications, Promises, and Pitfalls of Deep Learning for Fluorescence Image Reconstruction

N/A
N/A
Protected

Academic year: 2020

Share "Applications, Promises, and Pitfalls of Deep Learning for Fluorescence Image Reconstruction"

Copied!
14
0
0

Loading.... (view fulltext now)

Full text

Loading

Figure

Figure 1: Review of current applications of Deep Learning to fluorescence microscopy. (a) Content-aware image restoration(CARE) for denoising, super-resolution and axial deconvolution8,9
Figure 2: Potential applications of Deep Learning in fluorescence microscopy and key concepts

References

Related documents

( 2009 ) is an upper limit—inclined orbits can become unstable around planets with lower obliquities... We then investigated the instability as it applies to dust grains. Dust

% eventdata reserved - to be defined in a future version of MATLAB % handles structure with handles and user data (see GUIDATA) % --- Executes during object creation, after

By using the selected method and definition of new base for comparison of fuzzy trapezoidal numbers, Section 6 schedules the metagraph edges based on minimum fuzzy slack time when

It uses an ab initio iterative Markov modeling procedure to automatically perform the partition of genomic sequences into three subsets shown to correspond to coding, coding on

Because of COVID 19 the ARRL 2020 Field Day has some very unique temporary rules for this year only that allow Saratoga County ARA members to operate from their home stations and

Take-up to end September reached 10.78m sq ft, 18% above the long term trend whilst the investment volume of £11.91bn is 28% ahead of the average for activity in the first

To summarize, the clear effect of percentage of water-filled porosity on oil uptake (Papers I and II) together with possibilities to calculate regression equations that can

We present three new datasets, Aachen Day-Night, RobotCar Seasons (shown) and Extended CMU Seasons for evaluating 6DOF localization against a prior 3D map (top) using registered