Commit graph

352 commits

Author SHA1 Message Date
Colombo
58670722dc fix 2020-07-17 17:40:32 +04:00
Colombo
b9b97861e1 fix mask for style losses 2020-07-17 17:34:07 +04:00
Colombo
e8b04053e4 SAEHD:
Changed help for “Learning rate dropout” option:

When the face is trained enough, you can enable this option to get extra sharpness and reduce subpixel shake for less amount of iterations.

Enabled it before “disable random warp” and before GAN. n disabled. y enabled

cpu enabled on CPU. This allows not to use extra VRAM, sacrificing 20% time of iteration.

 Changed help for GAN option:

Train the network in Generative Adversarial manner.

Forces the neural network to learn small details of the face.

Enable it only when the face is trained enough and don't disable.

Typical value is 0.1

improved GAN. Now it produces better skin detail, less patterned aggressive artifacts, works faster.
https://i.imgur.com/Nbh3mw1.png
2020-07-16 22:19:17 +04:00
Colombo
44e6970dc5 changed help for gan_power 2020-06-30 12:37:12 +04:00
Colombo
4e998aff93 . 2020-06-24 10:06:31 +04:00
Colombo
f90723c9f9 SAEHD: ‘uniform_yaw’ now always enabled in pretrain mode. 2020-06-21 00:57:48 +04:00
Colombo
53222839c6 SAEHD: for -d archis resolution should be divided by 32 2020-06-19 14:21:41 +04:00
Colombo
0c2e1c3944 SAEHD:
Maximum resolution is increased to 640.

‘hd’ archi is removed. ‘hd’ was experimental archi created to remove subpixel shake, but ‘lr_dropout’ and ‘disable random warping’ do that better.

‘uhd’ is renamed to ‘-u’
dfuhd and liaeuhd will be automatically renamed to df-u and liae-u in existing models.

Added new experimental archi (key -d) which doubles the resolution using the same computation cost.
It is mean same configs will be x2 faster, or for example you can set 448 resolution and it will train as 224.
Strongly recommended not to train from scratch and use pretrained models.

New archi naming:
'df' keeps more identity-preserved face.
'liae' can fix overly different face shapes.
'-u' increased likeness of the face.
'-d' (experimental) doubling the resolution using the same computation cost
Examples: df, liae, df-d, df-ud, liae-ud, ...

Improved GAN training (GAN_power option).  It was used for dst model, but actually we don’t need it for dst.
Instead, a second src GAN model with x2 smaller patch size was added, so the overall quality for hi-res models should be higher.

Added option ‘Uniform yaw distribution of samples (y/n)’:
	Helps to fix blurry side faces due to small amount of them in the faceset.

Quick96:
	Now based on df-ud archi and 20% faster.

XSeg trainer:
	Improved sample generator.
Now it randomly adds the background from other samples.
Result is reduced chance of random mask noise on the area outside the face.
Now you can specify ‘batch_size’ in range 2-16.

Reduced size of samples with applied XSeg mask. Thus size of packed samples with applied xseg mask is also reduced.
2020-06-19 09:45:55 +04:00
Colombo
7f11713730 fix 2020-06-11 21:29:39 +04:00
Colombo
82f405ed49 Trainer: fixed "Choose image for the preview history". Now you can switch between subpreviews using 'space' key.
Fixed "Write preview history". Now it writes all subpreviews in separated folders
https://i.imgur.com/IszifCJ.jpg
also the last preview saved as _last.jpg before the first file
https://i.imgur.com/Ls1AOK4.jpg
thus you can easily check the changes with the first file in photo viewer
2020-06-10 10:20:13 +04:00
Colombo
af98407f06 SAEHD: lr_dropout now can be ‘n’, ‘y’, ‘cpu’. ‘n’ and ’y’ are the same as before.
‘cpu’ mean enabled on CPU. This allows not to use extra VRAM, sacrificing 20% time of iteration.

SAEHD: resolution >= 256 now has second dssim loss function
2020-06-08 14:18:33 +04:00
Colombo
2b7364005d Added new face type : head
Now you can replace the head.
Example: https://www.youtube.com/watch?v=xr5FHd0AdlQ
Requirements:
	Post processing skill in Adobe After Effects or Davinci Resolve.
Usage:
1)	Find suitable dst footage with the monotonous background behind head
2)	Use “extract head” script
3)	Gather rich src headset from only one scene (same color and haircut)
4)	Mask whole head for src and dst using XSeg editor
5)	Train XSeg
6)	Apply trained XSeg mask for src and dst headsets
7)	Train SAEHD using ‘head’ face_type as regular deepfake model with DF archi. You can use pretrained model for head. Minimum recommended resolution for head is 224.
8)	Extract multiple tracks, using Merger:
a.	Raw-rgb
b.	XSeg-prd mask
c.	XSeg-dst mask
9)	Using AAE or DavinciResolve, do:
a.	Hide source head using XSeg-prd mask: content-aware-fill, clone-stamp, background retraction, or other technique
b.	Overlay new head using XSeg-dst mask

Warning: Head faceset can be used for whole_face or less types of training only with XSeg masking.

XSegEditor: added button ‘view trained XSeg mask’, so you can see which frames should be masked to improve mask quality.
2020-04-04 09:28:06 +04:00
Colombo
0fb912e91f Trainer: added --silent-start cmd option 2020-04-02 13:05:04 +04:00
Colombo
3702531898 SAEHD: ‘Face style power’ and ‘Background style power’ are now available for whole_face
New help messages for these options:

Face style power
Learn the color of the predicted face to be the same as dst inside mask.
If you want to use this option with 'whole_face' you have to use XSeg trained mask.
Warning: Enable it only after 10k iters, when predicted face is clear enough to start learn style.
Start from 0.001 value and check history changes.
Enabling this option increases the chance of model collapse

Background style power
      Learn the area outside mask of the predicted face to be the same as dst.
If you want to use this option with 'whole_face' you have to use XSeg trained mask.
This can make face more like dst.
Enabling this option increases the chance of model collapse. Typical value is 2.0
2020-03-30 19:46:17 +04:00
Colombo
6d3607a13d New script:
5.XSeg) data_dst/src mask for XSeg trainer - fetch.bat
Copies faces containing XSeg polygons to aligned_xseg\ dir.
Useful only if you want to collect labeled faces and reuse them in other fakes.

Now you can use trained XSeg mask in the SAEHD training process.
It’s mean default ‘full_face’ mask obtained from landmarks will be replaced with the mask obtained from the trained XSeg model.
use
5.XSeg.optional) trained mask for data_dst/data_src - apply.bat
5.XSeg.optional) trained mask for data_dst/data_src - remove.bat

Normally you don’t need it. You can use it, if you want to use ‘face_style’ and ‘bg_style’ with obstructions.

XSeg trainer : now you can choose type of face
XSeg trainer : now you can restart training in “override settings”
Merger: XSeg-* modes now can be used with all types of faces.

Therefore old MaskEditor, FANSEG models, and FAN-x modes have been removed,
because the new XSeg solution is better, simpler and more convenient, which costs only 1 hour of manual masking for regular deepfake.
2020-03-30 14:00:40 +04:00
Colombo
497a7eec94 fix preview_history 2020-03-29 14:50:02 +04:00
Colombo
4e744cf184 Colab: change save preview iters to every 100 2020-03-28 13:58:41 +04:00
Colombo
6687213fa5 SAEHD: fixed the use of pretrained liae model, now it produces less face morphing 2020-03-27 00:15:18 +04:00
Colombo
eddebedcf6 SAEHD: added 'dfuhd' and 'liaeuhd' archi 2020-03-23 22:01:44 +04:00
Colombo
45582d129d added XSeg model.
with XSeg model you can train your own mask segmentator of dst(and src) faces
that will be used in merger for whole_face.

Instead of using a pretrained model (which does not exist),
you control which part of faces should be masked.

Workflow is not easy, but at the moment it is the best solution
for obtaining the best quality of whole_face's deepfakes using minimum effort
without rotoscoping in AfterEffects.

new scripts:
	XSeg) data_dst edit.bat
	XSeg) data_dst merge.bat
	XSeg) data_dst split.bat
	XSeg) data_src edit.bat
	XSeg) data_src merge.bat
	XSeg) data_src split.bat
	XSeg) train.bat

Usage:
	unpack dst faceset if packed

	run XSeg) data_dst split.bat
		this scripts extracts (previously saved) .json data from jpg faces to use in label tool.

	run XSeg) data_dst edit.bat
		new tool 'labelme' is used

		use polygon (CTRL-N) to mask the face
			name polygon "1" (one symbol) as include polygon
			name polygon "0" (one symbol) as exclude polygon

			'exclude polygons' will be applied after all 'include polygons'

		Hot keys:
		ctrl-N			create polygon
		ctrl-J			edit polygon
		A/D 			navigate between frames
		ctrl + mousewheel 	image zoom
		mousewheel		vertical scroll
		alt+mousewheel		horizontal scroll

		repeat for 10/50/100 faces,
			you don't need to mask every frame of dst,
			only frames where the face is different significantly,
			for example:
				closed eyes
				changed head direction
				changed light
			the more various faces you mask, the more quality you will get

			Start masking from the upper left area and follow the clockwise direction.
			Keep the same logic of masking for all frames, for example:
				the same approximated jaw line of the side faces, where the jaw is not visible
				the same hair line
			Mask the obstructions using polygon with name "0".

	run XSeg) data_dst merge.bat
		this script merges .json data of polygons into jpg faces,
		therefore faceset can be sorted or packed as usual.

	run XSeg) train.bat
		train the model

		Check the faces of 'XSeg dst faces' preview.

		if some faces have wrong or glitchy mask, then repeat steps:
			split
			run edit
			find these glitchy faces and mask them
			merge
			train further or restart training from scratch

Restart training of XSeg model is only possible by deleting all 'model\XSeg_*' files.

If you want to get the mask of the predicted face in merger,
you should repeat the same steps for src faceset.

New mask modes available in merger for whole_face:

XSeg-prd	  - XSeg mask of predicted face	 -> faces from src faceset should be labeled
XSeg-dst	  - XSeg mask of dst face        -> faces from dst faceset should be labeled
XSeg-prd*XSeg-dst - the smallest area of both

if workspace\model folder contains trained XSeg model, then merger will use it,
otherwise you will get transparent mask by using XSeg-* modes.

Some screenshots:
label tool: https://i.imgur.com/aY6QGw1.jpg
trainer   : https://i.imgur.com/NM1Kn3s.jpg
merger    : https://i.imgur.com/glUzFQ8.jpg

example of the fake using 13 segmented dst faces
          : https://i.imgur.com/wmvyizU.gifv
2020-03-15 15:12:44 +04:00
Colombo
dde856499d saehd: removed liaech 2020-03-13 13:04:26 +04:00
Colombo
61472cdaf7 global refactoring and fixes,
removed support of extracted(aligned) PNG faces. Use old builds to convert from PNG to JPG.

fanseg model file in facelib/ is renamed
2020-03-13 08:09:00 +04:00
Colombo
ba58621361 SAEHD: removed option learn_mask, it is now enabled by default 2020-03-10 10:36:08 +04:00
Colombo
b0b9072981 added XSeg model 2020-03-09 13:09:46 +04:00
Colombo
9eb15065f9 _ 2020-03-09 10:15:29 +04:00
Colombo
d731930537 fixes 2020-03-09 00:18:01 +04:00
Colombo
121c0cfc0f FANSeg : reverting to use it the same as in DFL 1.0 2020-03-08 22:25:11 +04:00
Colombo
22b0865455 upd FANSeg 2020-03-08 10:47:04 +04:00
Colombo
18d93376fc update FANSeg 2020-03-08 10:34:48 +04:00
Colombo
143792fd31 added fanseg for future WF segmentation model 2020-03-08 00:49:12 +04:00
Colombo
3b6ad4abf9 refactoring 2020-03-07 20:51:54 +04:00
Colombo
d6a685887f fix nick 2020-03-07 19:20:07 +04:00
Colombo
45270f3fb5 SAEHD:
added new experimental arhi
'liaech' - made by @chervoniy. Based on liae, but produces more src-like face.
2020-03-07 16:06:10 +04:00
Colombo
ada60ccefe code refactoring,
lr_dropout is now disabled in pretraining mode
changed help message for lr_dropout and random_warp
2020-03-07 13:59:47 +04:00
Colombo
302d23a612 refactoring 2020-03-03 22:20:15 +04:00
Colombo
757ec77e44 refactoring 2020-03-01 19:09:50 +04:00
Colombo
f88c45d338 fix saehd for multi gpu 2020-02-27 23:06:06 +04:00
Colombo
74999ce7ee SAEHD:
'models_opt_on_gpu' option is now available for multigpus (before only for 1 gpu)
max resolution is now 512
2020-02-27 16:21:32 +04:00
Colombo
30c93a9bdb fix 2020-02-27 11:41:06 +04:00
Colombo
c7ab9653c5 new optimized training:
for every batch_size*16 samples,
model collects the samples with the highest error and learns them again
therefore hard samples will be trained more often
2020-02-27 11:19:53 +04:00
Colombo
a5783df546 fix autobackup_hour 2020-02-27 11:13:45 +04:00
Colombo
a1cc297cef SAEHD: fix hd arhis 2020-02-25 21:58:05 +04:00
Colombo
58deb2bed1 enable pretrain option for whole_face type 2020-02-23 20:49:30 +04:00
Colombo
f1d115b63b added experimental face type 'whole_face'
Basic usage instruction: https://i.imgur.com/w7LkId2.jpg

	'whole_face' requires skill in Adobe After Effects.

	For using whole_face you have to extract whole_face's by using
	4) data_src extract whole_face
	and
	5) data_dst extract whole_face
	Images will be extracted in 512 resolution, so they can be used for regular full_face's and half_face's.

	'whole_face' covers whole area of face include forehead in training square,
	but training mask is still 'full_face'
	therefore it requires manual final masking and composing in Adobe After Effects.

added option 'masked_training'
	This option is available only for 'whole_face' type.
	Default is ON.
	Masked training clips training area to full_face mask,
	thus network will train the faces properly.
	When the face is trained enough, disable this option to train all area of the frame.
	Merge with 'raw-rgb' mode, then use Adobe After Effects to manually mask, tune color, and compose whole face include forehead.
2020-02-21 16:21:04 +04:00
Colombo
778fb94246 saehd change face_style help 2020-02-20 20:56:02 +04:00
Colombo
c052ee7d60 SAEHD : change help message for eyes_prio : Helps to fix eye problems during training like "alien eyes" and wrong eyes direction ( especially on HD architectures ) by forcing the neural network to train eyes with higher priority. before/after 2020-02-20 08:29:37 +04:00
Colombo
7a9cd6379f bug fixes 2020-02-19 15:27:22 +04:00
Colombo
f4b163d721 fix 2020-02-18 19:34:23 +04:00
Colombo
d4335b5fa5 fix 2020-02-18 19:16:44 +04:00
Colombo
9598ba0141 SAEHD:
added option Eyes priority (y/n)

	fix eye problems during training  ( especially on HD architectures )
	by forcing the neural network to train eyes with higher priority
	before/after https://i.imgur.com/YQHOuSR.jpg

	It does not guarantee the right eye direction.
2020-02-18 14:30:07 +04:00