Hi all,
I have a weird issue and can not figure out the reasons.
I am using Isonet v0.2 and it works well with the tutorial data.
When I try my own data, with tomogram reconstructed by Warp (Linux version) or tomo3D, all Isonet steps run smoothly without any errors or warnings. However, after prediction, the tomograms are only denoised, but no missing wedge compensation.
I also tried to skip the deconvolution step, but nothing helps.
Some other informations about my own data:
1. Collected by Krios with Falcon4i, raw data in eer format.
2. Tilt angle in -51˚ to 51˚.
3. Tomograms are reconstructed by WBP and always saved in 32-bit real type.
4. Tried tomograms reconstructed with pixel size 14.4Å and 18Å, no big differences.
5. I have also tested tomograms reconstructed by IMOD SIRT, but nothing helps.
6. I alway use default parameters for the training step, only tune the deconvolution/mask parameters when necessary.
7. I checked the *json files in the training results, the "losses" are not NAN, the values are around 0.15 for the 25th iterations.
Any idea about how to fix the issue?
Thanks!
Yunjie