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import numpy as np
import torch
from PIL import Image
import os
from glob import glob
import clip
import argparse
import pandas as pd
import librosa
import wav2clip
import torchvision as tv
from omegaconf import OmegaConf
class ToTensor1D(tv.transforms.ToTensor):
def __call__(self, tensor: np.ndarray):
tensor_2d = super(ToTensor1D, self).__call__(tensor[..., np.newaxis])
return tensor_2d.squeeze_(0)
@torch.no_grad()
def get_wav2clip_audio_embeddings(audio_paths, audio_encoder):
tracks = []
audio_transforms = ToTensor1D()
final_audio_tensor_len = 442763
for path_to_audio in audio_paths:
track, _ = librosa.load(path_to_audio, sr=44100, dtype=np.float32)
tracks.append(track)
audio = torch.stack([torch.nn.ConstantPad1d((0,final_audio_tensor_len-track.shape[0]),0)(audio_transforms(track.reshape(1, -1))) for track in tracks])
audio_features = torch.from_numpy(wav2clip.embed_audio(np.array(audio.squeeze(1)), audio_encoder)).to("cuda")
return audio_features
@torch.no_grad()
def get_text_clip_embeddings(labels, model):
device = "cuda" if torch.cuda.is_available() else "cpu"
text_features = []
for label in labels:
text = clip.tokenize([label]).to(device)
with torch.no_grad():
text_features.append(model.encode_text(text))
return torch.stack(text_features, dim=0)
@torch.no_grad()
def get_clip_image_embeddings(edit_paths, clip_model, preprocess):
#device = "cuda" if torch.cuda.is_available() else "cpu"
image_features_list = []
with torch.no_grad():
for ind, edited_path in enumerate(edit_paths):
image_features_list.append(clip_model.encode_image(preprocess(Image.open(edited_path)).unsqueeze(0).to("cuda")).float())
return torch.stack(image_features_list, dim=0)
def main(args):
## AUDIO LIST ###
edit_config = OmegaConf.load(args.cfg_path)
audio_list = edit_config.config.audio
audio_list = sorted(audio_list)
print("DONE READING AUDIO LIST LEN IS ", len(audio_list))
### CORRESPONDING DATASET IMAGES TO AUDIOS ###
dataset_images_list = []
parent_folder_dict = dict()
for x in audio_list:
audio_id = x.split("/")[-1].split(".")[0]
if args.dataset_type == "landscape":
audio_parent_folder = x.split("/")[-2]
print(f"audio id is {audio_id} and parent folder is {audio_parent_folder}")
parent_folder_dict[audio_id] = audio_parent_folder
if audio_parent_folder == "landscape-audios":
image_parent_folder = "landscape-images"
else:
image_parent_folder = "yt-images"
img_path = args.dataset_image_path + "/" + image_parent_folder+"/" + audio_id + ".png"
elif args.dataset_type == "ravdess":
audio_id = audio_id.split("_")[0]
img_path = args.dataset_image_path + "/" + audio_id + "_frame0.png"
else:
img_path = args.dataset_image_path + "/" + audio_id + ".png"
dataset_images_list.append(img_path)
print("DONE READING DATASET IMAGES - LIST LEN IS ", len(dataset_images_list))
### GENERATED IMAGES ###
edit_paths = sorted(glob(os.path.join(args.edited_images_path, "**", args.extension ), recursive=True))
print("DONE READING GENERATED IMAGES - LIST LEN IS ", len(edit_paths))
### LABELS ###
labels_df = pd.read_csv(args.labels_path)
labels_df['filename'] = labels_df['filename'] + '.wav'
labels_dict = dict(zip(labels_df['filename'], labels_df['label']))
label_texts = sorted(list(set(labels_dict.values())))
# REMOVE inversion images if any
edit_paths = [x for x in edit_paths if "inversion" not in x]
print("EDIT PATHS AFTER INVERSION REMOVAL LEN IS ", len(edit_paths))
# Remove source images if any
edit_paths = [x for x in edit_paths if "source" not in x.split("/")[-1].split("_")[0]]
print("EDIT PATHS AFTER SOURCE REMOVAL LEN IS ", len(edit_paths))
# create a properties dict for each image
img_props_dict = {}
for edit_path in edit_paths:
audio_id = edit_path.split("/")[-1].split(".")[0]
audio_id_wav = audio_id + ".wav"
if args.dataset_type == "landscape":
audio_path = os.path.join(args.dataset_audio_path, parent_folder_dict[audio_id], audio_id_wav )
else:
audio_path = os.path.join(args.dataset_audio_path, audio_id_wav)
img_folder = edit_path.split("/")[-2]
img_props = {}
img_props["audio_path"] = audio_path
img_props["audio_index"] = audio_list.index(audio_path)
img_props["audio_class"] = labels_dict[audio_id_wav]
img_props["audio_class_index"] = label_texts.index(img_props["audio_class"])
img_props_dict[edit_path] = img_props
## NOT USING THIS PART SINCE WE CACHE DATASET EMBEDDINGS
# ### audio validation set txt ###
# with open(args.validation_set_txt, "r") as f:
# validation_set = f.read().splitlines()
# # append root path to validation set
# validation_set = [os.path.join(args.dataset_audio_path, x) for x in validation_set]
# print("VALIDATION SET LEN IS ", len(validation_set))
# ### image validation set txt ###
# with open(args.validation_set_img_txt, "r") as f:
# validation_set_img = f.read().splitlines()
# # append root path to validation set
# validation_set_img = [os.path.join(args.dataset_image_path, x) for x in validation_set_img]
# print("VALIDATION SET IMG LEN IS ", len(validation_set_img))
# AUDIO EMBEDDINGS FROM WAV2CLIPIMAGES
if args.wav2clip:
print("Calculating Wav2clip score for audios" )
audio_model = wav2clip.get_model()
audio_model = audio_model.cuda()
audio_model.eval()
audio_embeddings_wav2clip = get_wav2clip_audio_embeddings(audio_list, audio_model)
audio_embeddings_wav2clip = audio_embeddings_wav2clip / audio_embeddings_wav2clip.norm(dim=-1, keepdim=True)
print(f"wav2clip audo embeddings shape is {audio_embeddings_wav2clip.shape}")
if args.dataset_type == "landscape":
random_audio_embeddings_wav2clip_cat = torch.load("metrics_tensors/landscape_w2c.pt").cuda()
elif args.dataset_type == "gh":
random_audio_embeddings_wav2clip_cat = torch.load("metrics_tensors/gh_w2c.pt").cuda()
else:
random_audio_embeddings_wav2clip_cat = torch.load("metrics_tensors/ravdess_w2c.pt").cuda()
# IMAGE EMBEDDINGS FROM VIT-B/32
if args.wav2clip:
clip_model, preprocess = clip.load("ViT-B/32", device="cuda")
image_embeddings_vit_b32 = get_clip_image_embeddings(edit_paths, clip_model, preprocess).squeeze(1)
image_embeddings_vit_b32 = image_embeddings_vit_b32 / image_embeddings_vit_b32.norm(dim=-1, keepdim=True)
print(f"image embeddings b_32 shape is {image_embeddings_vit_b32.shape}")
image_embeddings_dataset_vit_b32 = get_clip_image_embeddings(dataset_images_list, clip_model, preprocess).squeeze(1)
image_embeddings_dataset_vit_b32 = image_embeddings_dataset_vit_b32 / image_embeddings_dataset_vit_b32.norm(dim=-1, keepdim=True)
print(f"image embeddings dataset b_32 shape is {image_embeddings_dataset_vit_b32.shape}")
if args.iis or args.aic:
clip_model, preprocess = clip.load("ViT-L/14", device="cuda")
image_embeddings_edits_vit_l14 = get_clip_image_embeddings(edit_paths, clip_model, preprocess).squeeze(1)
image_embeddings_edits_vit_l14 = image_embeddings_edits_vit_l14 / image_embeddings_edits_vit_l14.norm(dim=-1, keepdim=True)
print(f"image embeddings l_14 shape is {image_embeddings_edits_vit_l14.shape}")
image_embeddings_dataset_vit_l14 = get_clip_image_embeddings(dataset_images_list, clip_model, preprocess).squeeze(1)
image_embeddings_dataset_vit_l14 = image_embeddings_dataset_vit_l14 / image_embeddings_dataset_vit_l14.norm(dim=-1, keepdim=True)
print(f"dataset image embeddings shape is {image_embeddings_dataset_vit_l14.shape}")
text_label_embeddings = get_text_clip_embeddings(label_texts, clip_model).squeeze(1).float()
text_label_embeddings = text_label_embeddings / text_label_embeddings.norm(dim=-1, keepdim=True)
print(f"text embeddings shape is {text_label_embeddings.shape}")
if args.dataset_type == "landscape":
random_image_embeddings_dataset_vit_l14_cat = torch.load("metrics_tensors/landscape_imgs.pt").cuda()
elif args.dataset_type == "gh":
random_image_embeddings_dataset_vit_l14_cat = torch.load("metrics_tensors/gh_imgs.pt").cuda()
else:
random_image_embeddings_dataset_vit_l14_cat = torch.load("metrics_tensors/ravdess_imgs.pt").cuda()
#random_image_embeddings_dataset_vit_l14_cat = torch.load("metrics_tensors/landscape_imgs.pt").cuda()
# CALCULATE SIMILARITY SCORES
if args.wav2clip:
# calculate all similarities
wav2clip_score = torch.einsum('ij,kj->ik', image_embeddings_vit_b32, audio_embeddings_wav2clip)
wav2clip_score = wav2clip_score.cpu().detach().numpy()
# get right indices for each image and find similarties
wav2clip_score_pair_scores = [wav2clip_score[img_ind][audio_ind] for img_ind, audio_ind in enumerate([img_props_dict[edited_img]["audio_index"] for edited_img in edit_paths])]
# create a list for each image in edit_paths
results_dict = {}
for img_ind, _ in enumerate(edit_paths):
results_dict[img_ind] = []
random_wav2clip_scores = torch.einsum('ij,kj->ik', image_embeddings_vit_b32, random_audio_embeddings_wav2clip_cat)
random_wav2clip_scores = random_wav2clip_scores.cpu().detach().numpy()
val_set_len = random_audio_embeddings_wav2clip_cat.shape[0]
for img_ind, _ in enumerate([img_props_dict[edited_img]["audio_index"] for edited_img in edit_paths]):
for random_ind in range(val_set_len):
if wav2clip_score_pair_scores[img_ind] > random_wav2clip_scores[img_ind][random_ind]:
results_dict[img_ind].append(1)
else:
results_dict[img_ind].append(0)
# take average of list in results_dict
wav2clip_ais_score = []
for img_ind, _ in enumerate(edit_paths):
wav2clip_ais_score.append(sum(results_dict[img_ind]) / len(results_dict[img_ind]))
wav2clip_ais_score = sum(wav2clip_ais_score) / len(wav2clip_ais_score)
print("WAV2CLIP AIS SCORE IS ", wav2clip_ais_score)
if args.iis:
clip_score_image_d = torch.einsum('ij,kj->ik', image_embeddings_edits_vit_l14, image_embeddings_dataset_vit_l14)
clip_score_image_d = clip_score_image_d.cpu().detach().numpy()
clip_score_image_d_pair_scores = [clip_score_image_d[img_ind][audio_ind] for img_ind, audio_ind in enumerate([img_props_dict[edited_img]["audio_index"] for edited_img in edit_paths])]
# create a list for each image in edit_paths
results_dict = {}
for img_ind, _ in enumerate(edit_paths):
results_dict[img_ind] = []
random_clip_score_image_d = torch.einsum('ij,kj->ik', image_embeddings_edits_vit_l14, random_image_embeddings_dataset_vit_l14_cat)
random_clip_score_image_d = random_clip_score_image_d.cpu().detach().numpy()
val_set_len = random_image_embeddings_dataset_vit_l14_cat.shape[0]
for img_ind, _ in enumerate([img_props_dict[edited_img]["audio_index"] for edited_img in edit_paths]):
for random_ind in range(val_set_len):
if clip_score_image_d_pair_scores[img_ind] > random_clip_score_image_d[img_ind][random_ind]:
results_dict[img_ind].append(1)
else:
results_dict[img_ind].append(0)
# take average of list in results_dict
iss_scores = []
for img_ind, _ in enumerate(edit_paths):
iss_scores.append(sum(results_dict[img_ind]) / len(results_dict[img_ind]))
score_iis = sum(iss_scores) / len(iss_scores)
if args.aic:
# calculate all similarities
clip_score_text = torch.einsum('ij,kj->ik', image_embeddings_edits_vit_l14, text_label_embeddings)
clip_score_text = clip_score_text.cpu().detach().numpy()
pairs_list = np.argmax(clip_score_text, axis=1)
# compare with gt labels
text_classifier_score = 0.0
for img_ind, audio_class_index in enumerate([img_props_dict[edited_img]["audio_class_index"] for edited_img in edit_paths]):
if pairs_list[img_ind] == audio_class_index:
text_classifier_score += 1
text_classifier_score = text_classifier_score / len(edit_paths)
## SAVE SCORES TO FILE
print(f"iis score at the end: {score_iis}")
print(f"wav2clip ais score at the end: {wav2clip_ais_score}")
print(f"text classifier score at the end: {text_classifier_score}")
with open(os.path.join(args.edited_images_path, f"_scores_ref_based.txt"), "w") as f:
f.write(f"wav2clip_ais_score: {wav2clip_ais_score}\n")
f.write(f"iis_score: {score_iis}\n")
f.write(f"text_classifier_score: {text_classifier_score}\n")
if __name__ == '__main__':
args = argparse.ArgumentParser()
args.add_argument('--seed', type=int, default=0)
args.add_argument('--edited_images_path', type=str, default="edited_image_path")
#"/kuacc/users/bbiner21/share_folder/edited_image_results/gh_default_setup_ep110_gh_source_2_pnp_configuration")
args.add_argument('--ais' , action='store_true')
args.add_argument('--iis' , action='store_true')
args.add_argument('--aic' , action='store_true')
args.add_argument('--dataset_image_path', type=str, default="/datasets/audio-image/images/landscape-images")
args.add_argument('--dataset_audio_path', type=str, default="/datasets/audio-image/audios/landscape-audios")
args.add_argument('--labels_path', type=str, default='data/greatest_hits/labels.csv')
args.add_argument('--extension', type=str, default='*.png')
args.add_argument('--dataset_type', type=str, default='landscape')
args.add_argument('--wav2clip', action='store_true')
args.add_argument('--clip_img_text', action='store_true')
args.add_argument('--validation_set_txt', type=str, default='')
args.add_argument('--validation_set_img_txt', type=str, default='')
args.add_argument('--cfg_path', type=str, default="/kuacc/users/bbiner21/hpc_run/Github/Audio_stable_diffusion_v1/configs/feature_visualization/feature-extraction-gh.yaml")
args = args.parse_args()
np.random.seed(args.seed)
torch.manual_seed(args.seed)
torch.cuda.manual_seed(args.seed)
print(f"cuda device available {torch.cuda.is_available()}")
main(args)
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