QA-CLIP-ViT-L-14 / README.md
Kunyi's picture
Update README.md
6fbc593
|
raw
history blame
13.1 kB
metadata
license: apache-2.0
widget:
  - src: >-
      https://huggingface.co/datasets/mishig/sample_images/resolve/main/cat-dog-music.png
    candidate_labels: 音乐表演, 体育运动
    example_title: 猫和狗

中文说明 | English

Introduction

This project aims to provide a better Chinese CLIP model. The training data used in this project consists of publicly accessible image URLs and related Chinese text descriptions, totaling 400 million. After screening, we ultimately used 100 million data for training. This project is produced by QQ-ARC Joint Lab, Tencent PCG.

Models and Results

Model Card

QA-CLIP currently has three different open-source models of different sizes, and their model information and download links are shown in the table below:

ModelCkpParamsVisionParams of VisionTextParams of TextResolution
QA-CLIPRN50Download77MResNet5038MRBT339M224
QA-CLIPViT-B/16Download188MViT-B/1686MRoBERTa-wwm-Base102M224
QA-CLIPViT-L/14Download406MViT-L/14304MRoBERTa-wwm-Base102M224

Results

We conducted zero-shot tests on MUGE Retrieval, Flickr30K-CN, and COCO-CN datasets for image-text retrieval tasks. For the image zero-shot classification task, we tested on the ImageNet dataset. The test results are shown in the table below:

Flickr30K-CN Zero-shot Retrieval (Official Test Set):

TaskText-to-ImageImage-to-Text
MetricR@1R@5R@10R@1R@5R@10
CN-CLIPRN5048.876.084.660.085.992.0
QA-CLIPRN5050.577.486.167.187.993.2
CN-CLIPViT-B/1662.786.992.874.693.597.1
QA-CLIPViT-B/1663.888.093.278.496.198.5
CN-CLIPViT-L/1468.089.794.480.296.698.2
AltClipViT-L/1469.790.194.884.897.799.1
CN-CLIPViT-L/1469.390.394.785.397.999.2

MUGE Zero-shot Retrieval (Official Validation Set):

TaskText-to-ImageImage-to-Text
MetricR@1R@5R@10R@1R@5R@10
CN-CLIPRN5042.668.578.030.056.266.9
QA-CLIPRN5044.069.979.532.459.570.3
CN-CLIPViT-B/1652.176.784.438.765.675.1
QA-CLIPViT-B/1653.277.785.140.768.277.2
CN-CLIPViT-L/1456.479.886.242.669.878.6
AltClipViT-L/1429.649.958.821.442.051.9
QA-CLIPViT-L/1457.481.087.745.573.081.4

COCO-CN Zero-shot Retrieval (Official Test Set):

TaskText-to-ImageImage-to-Text
MetricR@1R@5R@10R@1R@5R@10
CN-CLIPRN5048.181.390.550.981.190.5
QA-CLIPRN5050.182.591.756.785.292.9
CN-CLIPViT-B/1662.287.194.956.384.093.3
QA-CLIPViT-B/1662.987.794.761.587.694.8
CN-CLIPViT-L/1464.988.894.260.684.493.1
AltClipViT-L/1463.587.693.562.688.595.9
QA-CLIPViT-L/1465.790.295.064.588.395.1

Zero-shot Image Classification on ImageNet:

TaskImageNet
CN-CLIPRN5033.5
QA-CLIPRN5035.5
CN-CLIPViT-B/1648.4
QA-CLIPViT-B/1649.7
CN-CLIPViT-L/1454.7
QA-CLIPViT-L/1455.8



Getting Started

Installation Requirements

Environment configuration requirements:

  • python >= 3.6.4
  • pytorch >= 1.8.0 (with torchvision >= 0.9.0)
  • CUDA Version >= 10.2

Install required packages:

cd /yourpath/QA-CLIP-main
pip install -r requirements.txt

Inference Code

Inference code example:

from PIL import Image
import requests
from transformers import ChineseCLIPProcessor, ChineseCLIPModel

model = ChineseCLIPModel.from_pretrained("TencentARC/QA-CLIP-ViT-B-16")
processor = ChineseCLIPProcessor.from_pretrained("TencentARC/QA-CLIP-ViT-B-16")

url = "https://clip-cn-beijing.oss-cn-beijing.aliyuncs.com/pokemon.jpeg"
image = Image.open(requests.get(url, stream=True).raw)
# Squirtle, Bulbasaur, Charmander, Pikachu in English
texts = ["杰尼龟", "妙蛙种子", "小火龙", "皮卡丘"]

# compute image feature
inputs = processor(images=image, return_tensors="pt")
image_features = model.get_image_features(**inputs)
image_features = image_features / image_features.norm(p=2, dim=-1, keepdim=True)  # normalize

# compute text features
inputs = processor(text=texts, padding=True, return_tensors="pt")
text_features = model.get_text_features(**inputs)
text_features = text_features / text_features.norm(p=2, dim=-1, keepdim=True)  # normalize

# compute image-text similarity scores
inputs = processor(text=texts, images=image, return_tensors="pt", padding=True)
outputs = model(**inputs)
logits_per_image = outputs.logits_per_image  # this is the image-text similarity score
probs = logits_per_image.softmax(dim=1)



Prediction and Evaluation

Download Image-text Retrieval Test Dataset

In Project Chinese-CLIP, the test set has already been preprocessed. Here is the download link they provided:

MUGE dataset:download link

Flickr30K-CN dataset:download link

Additionally, obtaining the COCO-CN dataset requires applying to the original author.

Download ImageNet Dataset

Please download the raw data yourself,Chinese Label and English Label are provided by Project Chinese-CLIP

Image-text Retrieval Evaluation

The image-text retrieval evaluation code can be referred to as follows:

split=test # Designate the computation of features for the valid or test set
resume=your_ckp_path
DATAPATH=your_DATAPATH
dataset_name=Flickr30k-CN
# dataset_name=MUGE

python -u eval/extract_features.py \
    --extract-image-feats \
    --extract-text-feats \
    --image-data="${DATAPATH}/datasets/${dataset_name}/lmdb/${split}/imgs" \
    --text-data="${DATAPATH}/datasets/${dataset_name}/${split}_texts.jsonl" \
    --img-batch-size=32 \
    --text-batch-size=32 \
    --context-length=52 \
    --resume=${resume} \
    --vision-model=ViT-B-16 \
    --text-model=RoBERTa-wwm-ext-base-chinese

python -u eval/make_topk_predictions.py \
    --image-feats="${DATAPATH}/datasets/${dataset_name}/${split}_imgs.img_feat.jsonl" \
    --text-feats="${DATAPATH}/datasets/${dataset_name}/${split}_texts.txt_feat.jsonl" \
    --top-k=10 \
    --eval-batch-size=32768 \
    --output="${DATAPATH}/datasets/${dataset_name}/${split}_predictions.jsonl"

python -u eval/make_topk_predictions_tr.py \
    --image-feats="${DATAPATH}/datasets/${dataset_name}/${split}_imgs.img_feat.jsonl" \
    --text-feats="${DATAPATH}/datasets/${dataset_name}/${split}_texts.txt_feat.jsonl" \
    --top-k=10 \
    --eval-batch-size=32768 \
    --output="${DATAPATH}/datasets/${dataset_name}/${split}_tr_predictions.jsonl"

python eval/evaluation.py \
    ${DATAPATH}/datasets/${dataset_name}/${split}_texts.jsonl \
    ${DATAPATH}/datasets/${dataset_name}/${split}_predictions.jsonl \
    ${DATAPATH}/datasets/${dataset_name}/output1.json
cat  ${DATAPATH}/datasets/${dataset_name}/output1.json

python eval/transform_ir_annotation_to_tr.py \
    --input ${DATAPATH}/datasets/${dataset_name}/${split}_texts.jsonl

python eval/evaluation_tr.py \
    ${DATAPATH}/datasets/${dataset_name}/${split}_texts.tr.jsonl \
    ${DATAPATH}/datasets/${dataset_name}/${split}_tr_predictions.jsonl \
    ${DATAPATH}/datasets/${dataset_name}/output2.json
cat ${DATAPATH}/datasets/${dataset_name}/output2.json

ImageNet Zero-shot Classification

The ImageNet zero-shot classification code can be referred to as follows

bash scripts/zeroshot_eval.sh 0 \
    ${DATAPATH} imagenet \
    ViT-B-16 RoBERTa-wwm-ext-base-chinese \
    ./pretrained_weights/QA-CLIP-base.pt



Acknowledgments

The project code is based on implementation of Chinese-CLIP, and we are very grateful for their outstanding open-source contributions.