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Running
on
L4
import laion_clap | |
import glob | |
import json | |
import torch | |
import numpy as np | |
device = torch.device('cuda:0') | |
# download https://drive.google.com/drive/folders/1scyH43eQAcrBz-5fAw44C6RNBhC3ejvX?usp=sharing and extract ./ESC50_1/test/0.tar to ./ESC50_1/test/ | |
esc50_test_dir = './ESC50_1/test/*/' | |
class_index_dict_path = '/fsx/yusong/CLAP/class_labels/ESC50_class_labels_indices_space.json' | |
# Load the model | |
model = laion_clap.CLAP_Module(enable_fusion=False, device=device) | |
model.load_ckpt() | |
# Get the class index dict | |
class_index_dict = {v: k for v, k in json.load(open(class_index_dict_path)).items()} | |
# Get all the data | |
audio_files = sorted(glob.glob(esc50_test_dir + '**/*.flac', recursive=True)) | |
json_files = sorted(glob.glob(esc50_test_dir + '**/*.json', recursive=True)) | |
ground_truth_idx = [class_index_dict[json.load(open(jf))['tag'][0]] for jf in json_files] | |
with torch.no_grad(): | |
ground_truth = torch.tensor(ground_truth_idx).view(-1, 1) | |
# Get text features | |
all_texts = ["This is a sound of " + t for t in class_index_dict.keys()] | |
text_embed = model.get_text_embedding(all_texts) | |
audio_embed = model.get_audio_embedding_from_filelist(x=audio_files) | |
ranking = torch.argsort(torch.tensor(audio_embed) @ torch.tensor(text_embed).t(), descending=True) | |
preds = torch.where(ranking == ground_truth)[1] | |
preds = preds.cpu().numpy() | |
metrics = {} | |
metrics[f"mean_rank"] = preds.mean() + 1 | |
metrics[f"median_rank"] = np.floor(np.median(preds)) + 1 | |
for k in [1, 5, 10]: | |
metrics[f"R@{k}"] = np.mean(preds < k) | |
# map@10 | |
metrics[f"mAP@10"] = np.mean(np.where(preds < 10, 1 / (preds + 1), 0.0)) | |
print( | |
f"Zeroshot Classification Results: " | |
+ "\t".join([f"{k}: {round(v, 4):.4f}" for k, v in metrics.items()]) | |
) | |