Feat/content analyser pro (#859)

* Update to Yolo powered content analyser

* Update to Yolo powered content analyser

* Fix typing

* Drop bounding boxes and NMS check

* Drop bounding boxes and NMS check

* Fix CI
This commit is contained in:
Henry Ruhs
2025-01-23 12:12:03 +01:00
committed by henryruhs
parent 87e3a80491
commit 0e6ee69c53
2 changed files with 56 additions and 41 deletions

View File

@@ -1,6 +1,6 @@
from functools import lru_cache
from typing import List
import cv2
import numpy
from tqdm import tqdm
@@ -8,11 +8,9 @@ from facefusion import inference_manager, state_manager, wording
from facefusion.download import conditional_download_hashes, conditional_download_sources, resolve_download_url
from facefusion.filesystem import resolve_relative_path
from facefusion.thread_helper import conditional_thread_semaphore
from facefusion.typing import DownloadScope, Fps, InferencePool, ModelOptions, ModelSet, VisionFrame
from facefusion.vision import detect_video_fps, get_video_frame, read_image
from facefusion.typing import Detection, DownloadScope, Fps, InferencePool, ModelOptions, ModelSet, Score, VisionFrame
from facefusion.vision import detect_video_fps, get_video_frame, read_image, resize_frame_resolution
PROBABILITY_LIMIT = 0.80
RATE_LIMIT = 10
STREAM_COUNTER = 0
@@ -20,26 +18,25 @@ STREAM_COUNTER = 0
def create_static_model_set(download_scope : DownloadScope) -> ModelSet:
return\
{
'open_nsfw':
'yolo_nsfw':
{
'hashes':
{
'content_analyser':
{
'url': resolve_download_url('models-3.0.0', 'open_nsfw.hash'),
'path': resolve_relative_path('../.assets/models/open_nsfw.hash')
'url': resolve_download_url('models-3.2.0', 'yolo_11m_nsfw.hash'),
'path': resolve_relative_path('../.assets/models/yolo_11m_nsfw.hash')
}
},
'sources':
{
'content_analyser':
{
'url': resolve_download_url('models-3.0.0', 'open_nsfw.onnx'),
'path': resolve_relative_path('../.assets/models/open_nsfw.onnx')
'url': resolve_download_url('models-3.2.0', 'yolo_11m_nsfw.onnx'),
'path': resolve_relative_path('../.assets/models/yolo_11m_nsfw.onnx')
}
},
'size': (224, 224),
'mean': [ 104, 117, 123 ]
'size': (640, 640)
}
}
@@ -54,7 +51,7 @@ def clear_inference_pool() -> None:
def get_model_options() -> ModelOptions:
return create_static_model_set('full').get('open_nsfw')
return create_static_model_set('full').get('yolo_nsfw')
def pre_check() -> bool:
@@ -74,31 +71,9 @@ def analyse_stream(vision_frame : VisionFrame, video_fps : Fps) -> bool:
def analyse_frame(vision_frame : VisionFrame) -> bool:
vision_frame = prepare_frame(vision_frame)
probability = forward(vision_frame)
nsfw_scores = detect_nsfw(vision_frame)
return probability > PROBABILITY_LIMIT
def forward(vision_frame : VisionFrame) -> float:
content_analyser = get_inference_pool().get('content_analyser')
with conditional_thread_semaphore():
probability = content_analyser.run(None,
{
'input': vision_frame
})[0][0][1]
return probability
def prepare_frame(vision_frame : VisionFrame) -> VisionFrame:
model_size = get_model_options().get('size')
model_mean = get_model_options().get('mean')
vision_frame = cv2.resize(vision_frame, model_size).astype(numpy.float32)
vision_frame -= numpy.array(model_mean).astype(numpy.float32)
vision_frame = numpy.expand_dims(vision_frame, axis = 0)
return vision_frame
return len(nsfw_scores) > 0
@lru_cache(maxsize = None)
@@ -115,12 +90,52 @@ def analyse_video(video_path : str, trim_frame_start : int, trim_frame_end : int
counter = 0
with tqdm(total = len(frame_range), desc = wording.get('analysing'), unit = 'frame', ascii = ' =', disable = state_manager.get_item('log_level') in [ 'warn', 'error' ]) as progress:
for frame_number in frame_range:
if frame_number % int(video_fps) == 0:
vision_frame = get_video_frame(video_path, frame_number)
if analyse_frame(vision_frame):
counter += 1
rate = counter * int(video_fps) / len(frame_range) * 100
progress.update()
progress.set_postfix(rate = rate)
return rate > RATE_LIMIT
progress.update()
return rate > 10.0
def detect_nsfw(vision_frame : VisionFrame) -> List[Score]:
nsfw_scores = []
model_size = get_model_options().get('size')
temp_vision_frame = resize_frame_resolution(vision_frame, model_size)
detect_vision_frame = prepare_detect_frame(temp_vision_frame)
detection = forward(detect_vision_frame)
detection = numpy.squeeze(detection).T
nsfw_scores_raw = numpy.amax(detection[:, 4:], axis = 1)
keep_indices = numpy.where(nsfw_scores_raw > 0.2)[0]
if numpy.any(keep_indices):
nsfw_scores_raw = nsfw_scores_raw[keep_indices]
nsfw_scores = nsfw_scores_raw.ravel().tolist()
return nsfw_scores
def forward(vision_frame : VisionFrame) -> Detection:
content_analyser = get_inference_pool().get('content_analyser')
with conditional_thread_semaphore():
detection = content_analyser.run(None,
{
'input': vision_frame
})
return detection
def prepare_detect_frame(temp_vision_frame : VisionFrame) -> VisionFrame:
model_size = get_model_options().get('size')
detect_vision_frame = numpy.zeros((model_size[0], model_size[1], 3))
detect_vision_frame[:temp_vision_frame.shape[0], :temp_vision_frame.shape[1], :] = temp_vision_frame
detect_vision_frame = detect_vision_frame / 255.0
detect_vision_frame = numpy.expand_dims(detect_vision_frame.transpose(2, 0, 1), axis = 0).astype(numpy.float32)
return detect_vision_frame

View File

@@ -208,9 +208,9 @@ def estimate_face_angle(face_landmark_68 : FaceLandmark68) -> Angle:
return face_angle
def apply_nms(bounding_boxes : List[BoundingBox], face_scores : List[Score], score_threshold : float, nms_threshold : float) -> Sequence[int]:
def apply_nms(bounding_boxes : List[BoundingBox], scores : List[Score], score_threshold : float, nms_threshold : float) -> Sequence[int]:
normed_bounding_boxes = [ (x1, y1, x2 - x1, y2 - y1) for (x1, y1, x2, y2) in bounding_boxes ]
keep_indices = cv2.dnn.NMSBoxes(normed_bounding_boxes, face_scores, score_threshold = score_threshold, nms_threshold = nms_threshold)
keep_indices = cv2.dnn.NMSBoxes(normed_bounding_boxes, scores, score_threshold = score_threshold, nms_threshold = nms_threshold)
return keep_indices