You can download ZH-CLIP model from 🤗 thu-ml/zh-clip-vit-roberta-large-patch14. The model structure is shown below:
- Vision encoder network structure is the same as openai/clip-vit-large-patch14, and initialize with laion/CLIP-ViT-L-14-laion2B-s32B-b82K.
- Text encoder network struceure is the same as hfl/chinese-roberta-wwm-ext-large and initialized.
Model | Text-to-Image | Image-to-Text | ||||||
---|---|---|---|---|---|---|---|---|
R@1 | R@5 | R@10 | Mean | R@1 | R@5 | R@10 | Mean | |
Clip-Chinese | 22.60 | 50.04 | 65.24 | 45.96 | 22.8 | 49.8 | 64.1 | 45.57 |
mclip | 56.51 | 83.57 | 90.79 | 76.95 | 59.9 | 87.3 | 94.1 | 80.43 |
Taiyi-CLIP | 52.52 | 81.10 | 89.93 | 74.52 | 45.80 | 75.80 | 88.10 | 69.90 |
CN-CLIP | 64.10 | 88.79 | 94.40 | 82.43 | 61.00 | 84.40 | 93.10 | 79.5 |
altclip-xlmr-l | 62.87 | 87.18 | 94.01 | 81.35 | 63.3 | 88.3 | 95.3 | 82.3 |
ZH-CLIP | 68.00 | 89.46 | 95.44 | 84.30 | 68.50 | 90.10 | 96.50 | 85.03 |
Model | Text-to-Image | Image-to-Text | ||||||
---|---|---|---|---|---|---|---|---|
R@1 | R@5 | R@10 | Mean | R@1 | R@5 | R@10 | Mean | |
Clip-Chinese | 17.76 | 40.34 | 51.88 | 36.66 | 30.4 | 55.30 | 67.10 | 50.93 |
mclip | 62.3 | 86.42 | 92.58 | 80.43 | 84.4 | 97.3 | 98.9 | 93.53 |
Taiyi-CLIP | 53.5 | 80.5 | 87.24 | 73.75 | 65.4 | 90.6 | 95.7 | 83.9 |
CN-CLIP | 67.98 | 89.54 | 94.46 | 83.99 | 81.2 | 96.6 | 98.2 | 92.0 |
altclip-xlmr-l | 69.16 | 89.94 | 94.5 | 84.53 | 85.1 | 97.7 | 99.2 | 94.0 |
ZH-CLIP | 69.64 | 90.14 | 94.3 | 84.69 | 86.6 | 97.6 | 98.8 | 94.33 |
Model | Text-to-Image | |||
---|---|---|---|---|
R@1 | R@5 | R@10 | Mean | |
Clip-Chinese | 15.06 | 34.96 | 46.21 | 32.08 |
mclip | 22.34 | 41.15 | 50.26 | 37.92 |
Taiyi-CLIP | 42.09 | 67.75 | 77.21 | 62.35 |
cn-clip | 56.25 | 79.87 | 86.50 | 74.21 |
altclip-xlmr-l | 29.69 | 49.92 | 58.87 | 46.16 |
ZH-CLIP | 56.75 | 79.75 | 86.66 | 74.38 |
Model | Zero-shot Classification (ACC1) | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
CIFAR10 | CIFAR100 | DTD | EuroSAT | FER | FGVC | KITTI | MNIST | PC | VOC | ImageNet | |
Clip-Chinese | 86.85 | 44.21 | 18.40 | 34.86 | 14.21 | 3.87 | 32.63 | 14.37 | 52.49 | 67.73 | 22.22 |
mclip | 92.88 | 65.54 | 29.57 | 46.76 | 41.18 | 7.20 | 23.21 | 52.80 | 51.64 | 77.56 | 42.99 |
Taiyi-CLIP | 95.62 | 73.30 | 40.69 | 61.62 | 36.22 | 13.98 | 41.21 | 73.91 | 50.02 | 75.28 | 49.82 |
CN-CLIP | 94.75 | 75.04 | 44.73 | 52.34 | 48.57 | 20.55 | 20.11 | 61.99 | 62.59 | 79.12 | 53.40 |
Altclip-xlmr-l | 95.49 | 77.29 | 42.07 | 56.96 | 51.52 | 26.85 | 24.89 | 65.68 | 50.02 | 77.99 | 59.21 |
ZH-CLIP | 97.08 | 80.73 | 47.66 | 51.58 | 48.48 | 20.73 | 20.11 | 61.94 | 62.31 | 78.07 | 56.87 |
- python >= 3.9
- pip install -r requirements.txt
from PIL import Image
import requests
from models.zhclip import ZhCLIPProcessor, ZhCLIPModel
version = 'thu-ml/zh-clip-vit-roberta-large-patch14'
model = ZhCLIPModel.from_pretrained(version)
processor = ZhCLIPProcessor.from_pretrained(version)
url = "http://images.cocodataset.org/val2017/000000039769.jpg"
image = Image.open(requests.get(url, stream=True).raw)
inputs = processor(text=["一只猫", "一只狗"], images=image, return_tensors="pt", padding=True)
outputs = model(**inputs)
image_features = outputs.image_features
text_features = outputs.text_features
text_probs = (image_features @ text_features.T).softmax(dim=-1)
In addition, to compare the effectiveness of different methods, the inference methods of other Chinese CLIP models have been integrated. For the convenience of use, the inference code has also been made public, and please contact us if there is any infringement. The code only implements models at the same level as clip-vit-large-patch14, but it may be adapted for the use of more different versions of models in the future.
# | model | alias |
---|---|---|
0 | ZH-CLIP | zhclip |
1 | AltCLIP | altclip |
2 | Chinese-CLIP | cnclip |
3 | TaiyiCLIP | taiyiclip |
4 | Multilingual-CLIP | mclip |
5 | CLIP-Chinese | clip-chinese |
Usage in inference.py