If you wish to work outside this GUI, follow the GitHub tutorials. Training parameters that are optimizable may be optimized using cross-validation. Note: Parameters are categorized by those that need to be modified, might need to be modified, are optimizable, and are rarely modified. Do this by clicking Particle Picks → Export Picks or Project → Save in the top menu. Note: It is good practice to save your particles/project regularly. Press L on your keyboard to show the particle number, then the Up ↑ key will toggle the Topaz particle scores.Analyze Topaz Picks: Load Topaz picks by clicking Particle Picks → Import Picks.These picks may then be used in Topaz training. Export Particles: To export particles, click Particle Picks → Export Picks in the top menu.Several parameters are optimizable by cross-validation.Training often works best when the training radius is 3 pixels or less.Train a model: Use Topaz to train a neural network model to pick your particles.Note: The radius of the displayed pick is 5 pixels in un-zoomed images.More training particles and views means more accurate Topaz-trained picks. Note: Topaz works best if you identify 500+ particles representing all orientations of the particle and if you pick across several representative micrographs.To adjust a point's location, click the point again and either use the arrow keys on your keyboard or click-and-drag to move it.To delete a misplaced point, click the point again and press d.To zoom in/out, either press Ctrl and scroll your mouse wheel on an image or press + or - (equal = will reset the zoom).Left-click on the center of particles for several micrographs.Note: This Topaz GUI accepts PNG, JPEG, and BMP files.Click Add Images or Add Image Paths under 'Project' to the left.Pick Particles: Add images then pick particles:.A Gaussian mixture model is used to effectively make the ice region of each micrograph visible, even if there is gold in the image. Topaz normalization uses image statistics for all input micrographs.Your particle must have a diameter (longest dimension) after downsampling of: 70 pixels or less for resnet8 30 pixels or less for conv31 62 pixels or less for conv63 126 pixels or less for conv127.Preprocess MRCs: Use Topaz to downsample, normalize, and convert denoised micrographs to PNG (for use in Topaz picking GUI) and raw micrographs to MRC (for use with Topaz training). ![]() You may wish to make your own denoising model if the pre-trained models are not optimal. Denoising using the pre-trained models works best on K2, K3, Falcon II, and Falcon III micrographs.Denoise MRCs (recommended): Use Topaz-Denoise to denoise full-size raw micrographs.
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