desco / app.py
zdou0830's picture
test
e40c511
raw history blame
No virus
2.51 kB
import requests
import os
from io import BytesIO
from PIL import Image
import numpy as np
from pathlib import Path
import gradio as gr
import warnings
warnings.filterwarnings("ignore")
# os.system(
# "pip install einops shapely timm yacs tensorboardX ftfy prettytable pymongo click opencv-python inflect nltk scipy scikit-learn pycocotools")
# os.system("pip install transformers")
os.system("python setup.py build develop --user")
from maskrcnn_benchmark.config import cfg
from maskrcnn_benchmark.engine.predictor_glip import GLIPDemo
# Use this command for evaluate the GLIP-T model
config_file = "configs/pretrain/glip_Swin_T_O365_GoldG.yaml"
#weight_file = "MODEL/glip_tiny_model_o365_goldg_cc_sbu.pth"
# Use this command if you want to try the GLIP-L model
# ! wget https://penzhanwu2bbs.blob.core.windows.net/data/GLIPv1_Open/models/glip_large_model.pth -O MODEL/glip_large_model.pth
# config_file = "configs/pretrain/glip_Swin_L.yaml"
# weight_file = "MODEL/glip_large_model.pth"
# update the config options with the config file
# manual override some options
#cfg.local_rank = 0
#cfg.num_gpus = 1
cfg.merge_from_file(config_file)
#cfg.merge_from_list(["MODEL.WEIGHT", weight_file])
#cfg.merge_from_list(["MODEL.DEVICE", "cuda"])
glip_demo = GLIPDemo(
cfg,
min_image_size=800,
confidence_threshold=0.7,
show_mask_heatmaps=False
)
def predict(image, text):
result, _ = glip_demo.run_on_web_image(image[:, :, [2, 1, 0]], text, 0.5)
return result[:, :, [2, 1, 0]]
image = gr.inputs.Image()
gr.Interface(
description="Object Detection in the Wild through GLIP (https://github.com/microsoft/GLIP).",
fn=predict,
inputs=["image", "text"],
outputs=[
gr.outputs.Image(
type="pil",
# label="grounding results"
),
],
examples=[
["./flickr_9472793441.jpg", "bobble heads on top of the shelf ."],
["./flickr_9472793441.jpg", "sofa . remote . dog . person . car . sky . plane ."],
["./coco_000000281759.jpg", "A green umbrella. A pink striped umbrella. A plain white umbrella."],
["./coco_000000281759.jpg", "a flowery top. A blue dress. An orange shirt ."],
["./coco_000000281759.jpg", "a car . An electricity box ."],
["./flickr_7520721.jpg", "A woman figure skater in a blue costume holds her leg by the blade of her skate ."]
],
article=Path("docs/intro.md").read_text()
).launch()
# ).launch(server_name="0.0.0.0", server_port=7000, share=True)