OneFormer / gradio_app.py
praeclarumjj3's picture
Update model repos names
d3c3aa9
raw
history blame
No virus
11 kB
import torch
print("Installed the dependencies!")
import numpy as np
from PIL import Image
import cv2
import imutils
from detectron2.config import get_cfg
from detectron2.projects.deeplab import add_deeplab_config
from detectron2.data import MetadataCatalog
from oneformer import (
add_oneformer_config,
add_common_config,
add_swin_config,
add_dinat_config,
)
from demo.defaults import DefaultPredictor
from demo.visualizer import Visualizer, ColorMode
import gradio as gr
from huggingface_hub import hf_hub_download
KEY_DICT = {"Cityscapes (19 classes)": "cityscapes",
"COCO (133 classes)": "coco",
"ADE20K (150 classes)": "ade20k",}
SWIN_CFG_DICT = {"cityscapes": "configs/cityscapes/oneformer_swin_large_IN21k_384_bs16_90k.yaml",
"coco": "configs/coco/oneformer_swin_large_IN21k_384_bs16_100ep.yaml",
"ade20k": "configs/ade20k/oneformer_swin_large_IN21k_384_bs16_160k.yaml",}
SWIN_MODEL_DICT = {"cityscapes": hf_hub_download(repo_id="shi-labs/oneformer_cityscapes_swin_large",
filename="250_16_swin_l_oneformer_cityscapes_90k.pth"),
"coco": hf_hub_download(repo_id="shi-labs/oneformer_coco_swin_large",
filename="150_16_swin_l_oneformer_coco_100ep.pth"),
"ade20k": hf_hub_download(repo_id="shi-labs/oneformer_ade20k_swin_large",
filename="250_16_swin_l_oneformer_ade20k_160k.pth")
}
DINAT_CFG_DICT = {"cityscapes": "configs/cityscapes/oneformer_dinat_large_bs16_90k.yaml",
"coco": "configs/coco/oneformer_dinat_large_bs16_100ep.yaml",
"ade20k": "configs/ade20k/oneformer_dinat_large_IN21k_384_bs16_160k.yaml",}
DINAT_MODEL_DICT = {"cityscapes": hf_hub_download(repo_id="shi-labs/oneformer_cityscapes_dinat_large",
filename="250_16_dinat_l_oneformer_cityscapes_90k.pth"),
"coco": hf_hub_download(repo_id="shi-labs/oneformer_coco_dinat_large",
filename="150_16_dinat_l_oneformer_coco_100ep.pth"),
"ade20k": hf_hub_download(repo_id="shi-labs/oneformer_ade20k_dinat_large",
filename="250_16_dinat_l_oneformer_ade20k_160k.pth")
}
MODEL_DICT = {"DiNAT-L": DINAT_MODEL_DICT,
"Swin-L": SWIN_MODEL_DICT }
CFG_DICT = {"DiNAT-L": DINAT_CFG_DICT,
"Swin-L": SWIN_CFG_DICT }
WIDTH_DICT = {"cityscapes": 512,
"coco": 512,
"ade20k": 640}
cpu_device = torch.device("cpu")
PREDICTORS = {
"DiNAT-L": {
"Cityscapes (19 classes)": None,
"COCO (133 classes)": None,
"ADE20K (150 classes)": None
},
"Swin-L": {
"Cityscapes (19 classes)": None,
"COCO (133 classes)": None,
"ADE20K (150 classes)": None
}
}
METADATA = {
"DiNAT-L": {
"Cityscapes (19 classes)": None,
"COCO (133 classes)": None,
"ADE20K (150 classes)": None
},
"Swin-L": {
"Cityscapes (19 classes)": None,
"COCO (133 classes)": None,
"ADE20K (150 classes)": None
}
}
def setup_modules():
for dataset in ["Cityscapes (19 classes)", "COCO (133 classes)", "ADE20K (150 classes)"]:
for backbone in ["DiNAT-L", "Swin-L"]:
cfg = setup_cfg(dataset, backbone)
metadata = MetadataCatalog.get(
cfg.DATASETS.TEST_PANOPTIC[0] if len(cfg.DATASETS.TEST_PANOPTIC) else "__unused"
)
if 'cityscapes_fine_sem_seg_val' in cfg.DATASETS.TEST_PANOPTIC[0]:
from cityscapesscripts.helpers.labels import labels
stuff_colors = [k.color for k in labels if k.trainId != 255]
metadata = metadata.set(stuff_colors=stuff_colors)
PREDICTORS[backbone][dataset] = DefaultPredictor(cfg)
METADATA[backbone][dataset] = metadata
def setup_cfg(dataset, backbone):
# load config from file and command-line arguments
cfg = get_cfg()
add_deeplab_config(cfg)
add_common_config(cfg)
add_swin_config(cfg)
add_oneformer_config(cfg)
add_dinat_config(cfg)
dataset = KEY_DICT[dataset]
cfg_path = CFG_DICT[backbone][dataset]
cfg.merge_from_file(cfg_path)
if torch.cuda.is_available():
cfg.MODEL.DEVICE = 'cuda'
else:
cfg.MODEL.DEVICE = 'cpu'
cfg.MODEL.WEIGHTS = MODEL_DICT[backbone][dataset]
cfg.freeze()
return cfg
# def setup_modules(dataset, backbone):
# cfg = setup_cfg(dataset, backbone)
# predictor = DefaultPredictor(cfg)
# # predictor = PREDICTORS[backbone][dataset]
# metadata = MetadataCatalog.get(
# cfg.DATASETS.TEST_PANOPTIC[0] if len(cfg.DATASETS.TEST_PANOPTIC) else "__unused"
# )
# if 'cityscapes_fine_sem_seg_val' in cfg.DATASETS.TEST_PANOPTIC[0]:
# from cityscapesscripts.helpers.labels import labels
# stuff_colors = [k.color for k in labels if k.trainId != 255]
# metadata = metadata.set(stuff_colors=stuff_colors)
# return predictor, metadata
def panoptic_run(img, predictor, metadata):
visualizer = Visualizer(img[:, :, ::-1], metadata=metadata, instance_mode=ColorMode.IMAGE)
predictions = predictor(img, "panoptic")
panoptic_seg, segments_info = predictions["panoptic_seg"]
out = visualizer.draw_panoptic_seg_predictions(
panoptic_seg.to(cpu_device), segments_info, alpha=0.5
)
visualizer_map = Visualizer(img[:, :, ::-1], is_img=False, metadata=metadata, instance_mode=ColorMode.IMAGE)
out_map = visualizer_map.draw_panoptic_seg_predictions(
panoptic_seg.to(cpu_device), segments_info, alpha=1, is_text=False
)
return out, out_map
def instance_run(img, predictor, metadata):
visualizer = Visualizer(img[:, :, ::-1], metadata=metadata, instance_mode=ColorMode.IMAGE)
predictions = predictor(img, "instance")
instances = predictions["instances"].to(cpu_device)
out = visualizer.draw_instance_predictions(predictions=instances, alpha=0.5)
visualizer_map = Visualizer(img[:, :, ::-1], is_img=False, metadata=metadata, instance_mode=ColorMode.IMAGE)
out_map = visualizer_map.draw_instance_predictions(predictions=instances, alpha=1, is_text=False)
return out, out_map
def semantic_run(img, predictor, metadata):
visualizer = Visualizer(img[:, :, ::-1], metadata=metadata, instance_mode=ColorMode.IMAGE)
predictions = predictor(img, "semantic")
out = visualizer.draw_sem_seg(
predictions["sem_seg"].argmax(dim=0).to(cpu_device), alpha=0.5
)
visualizer_map = Visualizer(img[:, :, ::-1], is_img=False, metadata=metadata, instance_mode=ColorMode.IMAGE)
out_map = visualizer_map.draw_sem_seg(
predictions["sem_seg"].argmax(dim=0).to(cpu_device), alpha=1, is_text=False
)
return out, out_map
TASK_INFER = {"the task is panoptic": panoptic_run, "the task is instance": instance_run, "the task is semantic": semantic_run}
def segment(path, task, dataset, backbone):
# predictor, metadata = setup_modules(dataset, backbone)
predictor = PREDICTORS[backbone][dataset]
metadata = METADATA[backbone][dataset]
img = cv2.imread(path)
width = WIDTH_DICT[KEY_DICT[dataset]]
img = imutils.resize(img, width=width)
out, out_map = TASK_INFER[task](img, predictor, metadata)
out = Image.fromarray(out.get_image())
out_map = Image.fromarray(out_map.get_image())
return out, out_map
title = "<h1 style='margin-bottom: -10px; text-align: center'>OneFormer: One Transformer to Rule Universal Image Segmentation</h1>"
description = "<p style='font-size: 14px; margin: 5px; font-weight: w300; text-align: center'> <a href='https://praeclarumjj3.github.io/' style='text-decoration:none' target='_blank'>Jitesh Jain, </a> <a href='https://chrisjuniorli.github.io/' style='text-decoration:none' target='_blank'>Jiachen Li<sup>*</sup>, </a> <a href='https://www.linkedin.com/in/mtchiu/' style='text-decoration:none' target='_blank'>MangTik Chiu<sup>*</sup>, </a> <a href='https://alihassanijr.com/' style='text-decoration:none' target='_blank'>Ali Hassani, </a> <a href='https://www.linkedin.com/in/nukich74/' style='text-decoration:none' target='_blank'>Nikita Orlov, </a> <a href='https://www.humphreyshi.com/home' style='text-decoration:none' target='_blank'>Humphrey Shi</a></p>" \
+ "<p style='font-size: 16px; margin: 5px; font-weight: w600; text-align: center'> <a href='https://praeclarumjj3.github.io/oneformer/' target='_blank'>Project Page</a> | <a href='https://arxiv.org/abs/2211.06220' target='_blank'>ArXiv Paper</a> | <a href='https://github.com/SHI-Labs/OneFormer' target='_blank'>Github Repo</a></p>" \
+ "<p style='text-align: center; margin: 5px; font-size: 14px; font-weight: w300;'> \
OneFormer is the first multi-task universal image segmentation framework based on transformers. Our single OneFormer model achieves state-of-the-art performance across all three segmentation tasks with a single task-conditioned joint training process. OneFormer uses a task token to condition the model on the task in focus, making our architecture task-guided for training, and task-dynamic for inference, all with a single model. We believe OneFormer is a significant step towards making image segmentation more universal and accessible.\
</p>" \
+ "<p style='text-align: center; font-size: 14px; margin: 5px; font-weight: w300;'> [Note: Inference on CPU may take upto 2 minutes. On a single RTX A6000 GPU, OneFormer is able to inference at more than 15 FPS.]</p>"
setup_modules()
gradio_inputs = [gr.Image(source="upload", tool=None, label="Input Image",type="filepath"),
gr.Radio(choices=["the task is panoptic" ,"the task is instance", "the task is semantic"], type="value", value="the task is panoptic", label="Task Token Input"),
gr.Radio(choices=["COCO (133 classes)" ,"Cityscapes (19 classes)", "ADE20K (150 classes)"], type="value", value="COCO (133 classes)", label="Model"),
gr.Radio(choices=["DiNAT-L" ,"Swin-L"], type="value", value="DiNAT-L", label="Backbone"),
]
gradio_outputs = [gr.Image(type="pil", label="Segmentation Overlay"), gr.Image(type="pil", label="Segmentation Map")]
examples = [["examples/coco.jpeg", "the task is panoptic", "COCO (133 classes)", "DiNAT-L"],
["examples/cityscapes.png", "the task is panoptic", "Cityscapes (19 classes)", "DiNAT-L"],
["examples/ade20k.jpeg", "the task is panoptic", "ADE20K (150 classes)", "DiNAT-L"]]
iface = gr.Interface(fn=segment, inputs=gradio_inputs,
outputs=gradio_outputs,
examples_per_page=5,
allow_flagging="never",
examples=examples, title=title,
description=description)
iface.launch(enable_queue=True, server_name="0.0.0.0")