import argparse
import os
import random
from collections import defaultdict
import cv2
import re
import numpy as np
from PIL import Image
import torch
import html
import gradio as gr
import torchvision.transforms as T
import torch.backends.cudnn as cudnn
from minigpt4.common.config import Config
from minigpt4.common.registry import registry
from minigpt4.conversation.conversation import Conversation, SeparatorStyle, Chat
# imports modules for registration
from minigpt4.datasets.builders import *
from minigpt4.models import *
from minigpt4.processors import *
from minigpt4.runners import *
from minigpt4.tasks import *
def parse_args():
parser = argparse.ArgumentParser(description="Demo")
parser.add_argument("--cfg-path", default='eval_configs/demo.yaml',
help="path to configuration file.")
parser.add_argument(
"--options",
nargs="+",
help="override some settings in the used config, the key-value pair "
"in xxx=yyy format will be merged into config file (deprecate), "
"change to --cfg-options instead.",
)
args = parser.parse_args()
return args
random.seed(42)
np.random.seed(42)
torch.manual_seed(42)
cudnn.benchmark = False
cudnn.deterministic = True
print('Initializing Chat')
args = parse_args()
cfg = Config(args)
device = 'cuda'
model_config = cfg.model_cfg
print("model_config:", model_config)
model_cls = registry.get_model_class(model_config.arch)
model = model_cls.from_config(model_config).to(device)
bounding_box_size = 100
vis_processor_cfg = cfg.datasets_cfg.feature_face_caption.vis_processor.train
vis_processor = registry.get_processor_class(vis_processor_cfg.name).from_config(vis_processor_cfg)
model = model.eval()
CONV_VISION = Conversation(
system="",
roles=(r"[INST] ", r" [/INST]"),
messages=[],
offset=2,
sep_style=SeparatorStyle.SINGLE,
sep="",
)
def extract_substrings(string):
# first check if there is no-finished bracket
index = string.rfind('}')
if index != -1:
string = string[:index + 1]
pattern = r'
(.*?)\}(?!<)'
matches = re.findall(pattern, string)
substrings = [match for match in matches]
return substrings
def is_overlapping(rect1, rect2):
x1, y1, x2, y2 = rect1
x3, y3, x4, y4 = rect2
return not (x2 < x3 or x1 > x4 or y2 < y3 or y1 > y4)
def computeIoU(bbox1, bbox2):
x1, y1, x2, y2 = bbox1
x3, y3, x4, y4 = bbox2
intersection_x1 = max(x1, x3)
intersection_y1 = max(y1, y3)
intersection_x2 = min(x2, x4)
intersection_y2 = min(y2, y4)
intersection_area = max(0, intersection_x2 - intersection_x1 + 1) * max(0, intersection_y2 - intersection_y1 + 1)
bbox1_area = (x2 - x1 + 1) * (y2 - y1 + 1)
bbox2_area = (x4 - x3 + 1) * (y4 - y3 + 1)
union_area = bbox1_area + bbox2_area - intersection_area
iou = intersection_area / union_area
return iou
def save_tmp_img(visual_img):
file_name = "".join([str(random.randint(0, 9)) for _ in range(5)]) + ".jpg"
file_path = "/tmp/gradio" + file_name
visual_img.save(file_path)
return file_path
def mask2bbox(mask):
if mask is None:
return ''
mask = mask.resize([100, 100], resample=Image.NEAREST)
mask = np.array(mask)[:, :, 0]
rows = np.any(mask, axis=1)
cols = np.any(mask, axis=0)
if rows.sum():
# Get the top, bottom, left, and right boundaries
rmin, rmax = np.where(rows)[0][[0, -1]]
cmin, cmax = np.where(cols)[0][[0, -1]]
bbox = '{{<{}><{}><{}><{}>}}'.format(cmin, rmin, cmax, rmax)
else:
bbox = ''
return bbox
def escape_markdown(text):
# List of Markdown special characters that need to be escaped
md_chars = ['<', '>']
# Escape each special character
for char in md_chars:
text = text.replace(char, '\\' + char)
return text
def reverse_escape(text):
md_chars = ['\\<', '\\>']
for char in md_chars:
text = text.replace(char, char[1:])
return text
colors = [
(255, 0, 0),
(0, 255, 0),
(0, 0, 255),
(210, 210, 0),
(255, 0, 255),
(0, 255, 255),
(114, 128, 250),
(0, 165, 255),
(0, 128, 0),
(144, 238, 144),
(238, 238, 175),
(255, 191, 0),
(0, 128, 0),
(226, 43, 138),
(255, 0, 255),
(0, 215, 255),
]
color_map = {
f"{color_id}": f"#{hex(color[2])[2:].zfill(2)}{hex(color[1])[2:].zfill(2)}{hex(color[0])[2:].zfill(2)}" for
color_id, color in enumerate(colors)
}
used_colors = colors
def get_first_frame(video_path):
cap = cv2.VideoCapture(video_path)
if not cap.isOpened():
print("Error: Cannot open video.")
return None
ret, frame = cap.read()
cap.release()
if ret:
return frame
else:
print("Error: Cannot read frame from video.")
return None
def visualize_all_bbox_together(image, generation):
if image is None:
return None, ''
if isinstance(image, str): # is a image path
raw_image = get_first_frame(image)
frame_rgb = cv2.cvtColor(raw_image, cv2.COLOR_BGR2RGB)
image = Image.fromarray(frame_rgb)
generation = html.unescape(generation)
image_width, image_height = image.size
image = image.resize([500, int(500 / image_width * image_height)])
image_width, image_height = image.size
string_list = extract_substrings(generation)
if string_list: # it is grounding or detection
mode = 'all'
entities = defaultdict(list)
i = 0
j = 0
for string in string_list:
try:
obj, string = string.split('
')
except ValueError:
print('wrong string: ', string)
continue
bbox_list = string.split('')
flag = False
for bbox_string in bbox_list:
integers = re.findall(r'-?\d+', bbox_string)
if len(integers) == 4:
x0, y0, x1, y1 = int(integers[0]), int(integers[1]), int(integers[2]), int(integers[3])
left = x0 / bounding_box_size * image_width
bottom = y0 / bounding_box_size * image_height
right = x1 / bounding_box_size * image_width
top = y1 / bounding_box_size * image_height
entities[obj].append([left, bottom, right, top])
j += 1
flag = True
if flag:
i += 1
else:
integers = re.findall(r'-?\d+', generation)
if len(integers) == 4: # it is refer
mode = 'single'
entities = list()
x0, y0, x1, y1 = int(integers[0]), int(integers[1]), int(integers[2]), int(integers[3])
left = x0 / bounding_box_size * image_width
bottom = y0 / bounding_box_size * image_height
right = x1 / bounding_box_size * image_width
top = y1 / bounding_box_size * image_height
entities.append([left, bottom, right, top])
else:
# don't detect any valid bbox to visualize
return None, ''
if len(entities) == 0:
return None, ''
if isinstance(image, Image.Image):
image_h = image.height
image_w = image.width
image = np.array(image)
elif isinstance(image, str):
if os.path.exists(image):
pil_img = Image.open(image).convert("RGB")
image = np.array(pil_img)[:, :, [2, 1, 0]]
image_h = pil_img.height
image_w = pil_img.width
else:
raise ValueError(f"invaild image path, {image}")
elif isinstance(image, torch.Tensor):
image_tensor = image.cpu()
reverse_norm_mean = torch.tensor([0.48145466, 0.4578275, 0.40821073])[:, None, None]
reverse_norm_std = torch.tensor([0.26862954, 0.26130258, 0.27577711])[:, None, None]
image_tensor = image_tensor * reverse_norm_std + reverse_norm_mean
pil_img = T.ToPILImage()(image_tensor)
image_h = pil_img.height
image_w = pil_img.width
image = np.array(pil_img)[:, :, [2, 1, 0]]
else:
raise ValueError(f"invaild image format, {type(image)} for {image}")
indices = list(range(len(entities)))
new_image = image.copy()
previous_bboxes = []
# size of text
text_size = 0.5
# thickness of text
text_line = 1 # int(max(1 * min(image_h, image_w) / 512, 1))
box_line = 2
(c_width, text_height), _ = cv2.getTextSize("F", cv2.FONT_HERSHEY_COMPLEX, text_size, text_line)
base_height = int(text_height * 0.675)
text_offset_original = text_height - base_height
text_spaces = 2
# num_bboxes = sum(len(x[-1]) for x in entities)
used_colors = colors # random.sample(colors, k=num_bboxes)
color_id = -1
for entity_idx, entity_name in enumerate(entities):
if mode == 'single' or mode == 'identify':
bboxes = entity_name
bboxes = [bboxes]
else:
bboxes = entities[entity_name]
color_id += 1
for bbox_id, (x1_norm, y1_norm, x2_norm, y2_norm) in enumerate(bboxes):
skip_flag = False
orig_x1, orig_y1, orig_x2, orig_y2 = int(x1_norm), int(y1_norm), int(x2_norm), int(y2_norm)
color = used_colors[entity_idx % len(used_colors)] # tuple(np.random.randint(0, 255, size=3).tolist())
new_image = cv2.rectangle(new_image, (orig_x1, orig_y1), (orig_x2, orig_y2), color, box_line)
if mode == 'all':
l_o, r_o = box_line // 2 + box_line % 2, box_line // 2 + box_line % 2 + 1
x1 = orig_x1 - l_o
y1 = orig_y1 - l_o
if y1 < text_height + text_offset_original + 2 * text_spaces:
y1 = orig_y1 + r_o + text_height + text_offset_original + 2 * text_spaces
x1 = orig_x1 + r_o
# add text background
(text_width, text_height), _ = cv2.getTextSize(f" {entity_name}", cv2.FONT_HERSHEY_COMPLEX, text_size,
text_line)
text_bg_x1, text_bg_y1, text_bg_x2, text_bg_y2 = x1, y1 - (
text_height + text_offset_original + 2 * text_spaces), x1 + text_width, y1
for prev_bbox in previous_bboxes:
if computeIoU((text_bg_x1, text_bg_y1, text_bg_x2, text_bg_y2), prev_bbox['bbox']) > 0.95 and \
prev_bbox['phrase'] == entity_name:
skip_flag = True
break
while is_overlapping((text_bg_x1, text_bg_y1, text_bg_x2, text_bg_y2), prev_bbox['bbox']):
text_bg_y1 += (text_height + text_offset_original + 2 * text_spaces)
text_bg_y2 += (text_height + text_offset_original + 2 * text_spaces)
y1 += (text_height + text_offset_original + 2 * text_spaces)
if text_bg_y2 >= image_h:
text_bg_y1 = max(0, image_h - (text_height + text_offset_original + 2 * text_spaces))
text_bg_y2 = image_h
y1 = image_h
break
if not skip_flag:
alpha = 0.5
for i in range(text_bg_y1, text_bg_y2):
for j in range(text_bg_x1, text_bg_x2):
if i < image_h and j < image_w:
if j < text_bg_x1 + 1.35 * c_width:
# original color
bg_color = color
else:
# white
bg_color = [255, 255, 255]
new_image[i, j] = (alpha * new_image[i, j] + (1 - alpha) * np.array(bg_color)).astype(
np.uint8)
cv2.putText(
new_image, f" {entity_name}", (x1, y1 - text_offset_original - 1 * text_spaces),
cv2.FONT_HERSHEY_COMPLEX, text_size, (0, 0, 0), text_line, cv2.LINE_AA
)
previous_bboxes.append(
{'bbox': (text_bg_x1, text_bg_y1, text_bg_x2, text_bg_y2), 'phrase': entity_name})
if mode == 'all':
def color_iterator(colors):
while True:
for color in colors:
yield color
color_gen = color_iterator(colors)
# Add colors to phrases and remove
def colored_phrases(match):
phrase = match.group(1)
color = next(color_gen)
return f'{phrase}'
generation = re.sub(r'{<\d+><\d+><\d+><\d+>}|', '', generation)
generation_colored = re.sub(r'(.*?)
', colored_phrases, generation)
else:
generation_colored = ''
pil_image = Image.fromarray(new_image)
return pil_image, generation_colored
def gradio_reset(chat_state, img_list):
if chat_state is not None:
chat_state.messages = []
if img_list is not None:
img_list = []
return None, gr.update(value=None, interactive=True), gr.update(placeholder='Upload your image and chat',
interactive=True), chat_state, img_list
def image_upload_trigger(upload_flag, replace_flag, img_list):
# set the upload flag to true when receive a new image.
# if there is an old image (and old conversation), set the replace flag to true to reset the conv later.
upload_flag = 1
if img_list:
replace_flag = 1
return upload_flag, replace_flag
def example_trigger(text_input, image, upload_flag, replace_flag, img_list):
# set the upload flag to true when receive a new image.
# if there is an old image (and old conversation), set the replace flag to true to reset the conv later.
upload_flag = 1
if img_list or replace_flag == 1:
replace_flag = 1
return upload_flag, replace_flag
def gradio_ask(user_message, chatbot, chat_state, gr_img, img_list, upload_flag, replace_flag):
print("+++gradio_ask+++")
if len(user_message) == 0:
text_box_show = 'Input should not be empty!'
else:
text_box_show = ''
print('user_message:', user_message)
print('chatbot:', chatbot)
print('chat_state:', chat_state)
if isinstance(gr_img, dict):
gr_img, mask = gr_img['image'], gr_img['mask']
else:
mask = None
if '[identify]' in user_message:
# check if user provide bbox in the text input
integers = re.findall(r'-?\d+', user_message)
if len(integers) != 4: # no bbox in text
bbox = mask2bbox(mask)
user_message = user_message + bbox
if chat_state is None:
chat_state = CONV_VISION.copy()
if upload_flag:
if replace_flag:
chat_state = CONV_VISION.copy() # new image, reset everything
replace_flag = 0
chatbot = []
img_list = []
llm_message = chat.upload_img(gr_img, chat_state, img_list)
upload_flag = 0
chat.ask(user_message, chat_state)
print('user_message: ', user_message)
print('chat_state: ', chat_state)
chatbot = chatbot + [[user_message, None]]
if '[identify]' in user_message:
visual_img, _ = visualize_all_bbox_together(gr_img, user_message)
if visual_img is not None:
file_path = save_tmp_img(visual_img)
chatbot = chatbot + [[(file_path,), None]]
return text_box_show, chatbot, chat_state, img_list, upload_flag, replace_flag
def gradio_answer(chatbot, chat_state, img_list, temperature):
print("--gradio_answer--")
# print('img_list: ', img_list)
llm_message = chat.answer(conv=chat_state,
img_list=img_list,
temperature=temperature,
max_new_tokens=500,
max_length=2000)[0]
chatbot[-1][1] = llm_message
print('gradio_answer: ', llm_message)
return chatbot, chat_state
def process_english_text(text):
if len(text) < 2:
return text
text = text[0].upper() + text[1:]
sentences = text.split('. ')
corrected_sentences = [s.capitalize() for s in sentences]
text = '. '.join(corrected_sentences)
if text.endswith(','):
text = text[:-1]
if not text.endswith('.'):
text += '.'
return text
def gradio_stream_answer(chatbot, chat_state, img_list, temperature):
print('---gradio_stream_answer---')
if len(img_list) > 0:
if not isinstance(img_list[0], torch.Tensor):
chat.encode_img(img_list)
print(chat)
streamer = chat.stream_answer(conv=chat_state,
img_list=img_list,
temperature=temperature,
max_new_tokens=500,
max_length=2000)
output = ''
print('streamer:', streamer)
for new_output in streamer:
escapped = escape_markdown(new_output)
output += escapped
chatbot[-1][1] = output
chatbot[-1][1] = process_english_text(chatbot[-1][1])
yield chatbot, chat_state
chat_state.messages[-1][1] = ''
print('output:', output)
return chatbot, chat_state
def gradio_visualize(chatbot, gr_img):
if isinstance(gr_img, dict):
gr_img, mask = gr_img['image'], gr_img['mask']
unescaped = reverse_escape(chatbot[-1][1])
visual_img, generation_color = visualize_all_bbox_together(gr_img, unescaped)
if visual_img is not None:
if len(generation_color):
chatbot[-1][1] = generation_color
file_path = save_tmp_img(visual_img)
chatbot = chatbot + [[None, (file_path,)]]
return chatbot
def gradio_taskselect(idx):
prompt_list = [
'',
'[reason] ',
'[emotion] ',
'[visual] ',
'[audio] '
]
instruct_list = [
'**Hint:** Type in whatever you want',
'**Hint:** Send the command to multimodal emotion reasoning',
'**Hint:** Send the command to multimodal emotion recognition',
'**Hint:** Send the command to generate visual description',
'**Hint:** Send the command to generate audio description'
]
return prompt_list[idx], instruct_list[idx]
chat = Chat(model, vis_processor, device=device)
title = """Emotion-LLaMA Demo
"""
description = 'Welcome to Our Emotion-LLaMA Chatbot Demo!'
article = """
"""
introduction = '''
For Abilities Involging Multimodal Emotion Understanding:
1. Reason: Click **Send** to generate a multimodal emotion description.
2. Emotion: Click **Send** to generate an emotion label.
3. Visual: Click **Send** to generate a visual description.
4. Audio: Click **Send** to generate an audio description.
5. No Tag: Input whatever you want and click **Send** without any tagging.
You can also simply chat in free form!
'''
text_input = gr.Textbox(placeholder='Upload your image and chat', interactive=True, show_label=False, container=False, scale=8)
with gr.Blocks() as demo:
gr.Markdown(title)
# gr.Markdown(description)
gr.Markdown(article)
with gr.Row():
with gr.Column(scale=0.5):
# image = gr.Image(type="pil", tool='sketch', brush_radius=20)
image = gr.Video(sources=["upload", "webcam"])
temperature = gr.Slider(
minimum=0.1,
maximum=1.5,
value=0.2,
step=0.1,
interactive=True,
label="Temperature",
)
clear = gr.Button("Restart")
gr.Markdown(introduction)
with gr.Column():
chat_state = gr.State(value=None)
img_list = gr.State(value=[])
chatbot = gr.Chatbot(label='Emotion-LLaMA')
dataset = gr.Dataset(
components=[gr.Textbox(visible=False)],
samples=[['No Tag'], ['reason'], ['emotion'], ['visual'], ['audio']],
type="index",
label='Task Shortcuts',
)
task_inst = gr.Markdown('**Hint:** Upload your video and chat')
with gr.Row():
text_input.render()
send = gr.Button("Send", variant='primary', size='sm', scale=1)
upload_flag = gr.State(value=0)
replace_flag = gr.State(value=0)
image.upload(image_upload_trigger, [upload_flag, replace_flag, img_list], [upload_flag, replace_flag])
with gr.Row():
with gr.Column():
gr.Examples(examples=[
["examples/samplenew_00004251.mp4", "[detection] face", upload_flag, replace_flag, img_list],
["examples/sample_00000338.mp4", "The person in video says: Oh no, my phone and wallet are all in my bag. [emotion] Please determine which emotion label in the video represents: happy, sad, neutral, angry, worried, surprise.", upload_flag, replace_flag, img_list],
["examples/sample_00000669.mp4", "The person in video says: Why are you looking at me like this? It's just a woman, so you have to have something to do with me. [emotion] Determine the emotional state shown in the video, choosing from happy, sad, neutral, angry, worried, or surprise.", upload_flag, replace_flag, img_list],
["examples/sample_00003462.mp4", "The person in video says: Do you believe that you push me around? [emotion] Assess and label the emotion evident in the video: could it be happy, sad, neutral, angry, worried, surprise?", upload_flag, replace_flag, img_list],
["examples/sample_00000727.mp4", "The person in video says: No, this, I have to get up! You, I'm sorry, everyone. I'm sorry, it's from the German side. [emotion] Identify the displayed emotion in the video: is it happy, sad, neutral, angry, worried, or surprise?", upload_flag, replace_flag, img_list],
["examples/samplenew_00061200.mp4", "The person in video says: Me: I'm not going in anymore, scared. [emotion] Identify the displayed emotion in the video: is it happy, sad, neutral, angry, fear, contempt, doubt, worried, or surprise?", upload_flag, replace_flag, img_list],
], inputs=[image, text_input, upload_flag, replace_flag, img_list], fn=example_trigger,
outputs=[upload_flag, replace_flag])
with gr.Column():
gr.Examples(examples=[
["examples/samplenew_00051251.mp4", "In what state is the person in the video, say the following: \"Do you really think so?\"", upload_flag, replace_flag, img_list],
["examples/sample_00004735.mp4", "[visual] What are the emotions of the woman in the video?", upload_flag, replace_flag, img_list],
["examples/sample_00002422.mp4", "[audio] Analyze the speaker's voice in the video.", upload_flag, replace_flag, img_list],
["examples/sample_00001073.mp4", "The person in video says: Make him different from before. I like the way you are now. [reason] Please analyze all the clues in the video and reason out the emotional label of the person in the video.", upload_flag, replace_flag, img_list],
["examples/sample_00004671.mp4", "The person in video says: Won't you? Impossible! Fan Xiaomei is not such a person. [reason] What are the facial expressions and vocal tone used in the video? What is the intended meaning behind his words? Which emotion does this reflect?", upload_flag, replace_flag, img_list],
["examples/sample_00005854.mp4", "The person in video says: Bastard! Boss, you don't choose, you prefer. [reason] Please integrate information from various modalities to infer the emotional category of the person in the video.", upload_flag, replace_flag, img_list],
], inputs=[image, text_input, upload_flag, replace_flag, img_list], fn=example_trigger,
outputs=[upload_flag, replace_flag])
dataset.click(
gradio_taskselect,
inputs=[dataset],
outputs=[text_input, task_inst],
show_progress="hidden",
postprocess=False,
queue=False,
)
text_input.submit(
gradio_ask,
[text_input, chatbot, chat_state, image, img_list, upload_flag, replace_flag],
[text_input, chatbot, chat_state, img_list, upload_flag, replace_flag], queue=False
).success(
gradio_stream_answer,
[chatbot, chat_state, img_list, temperature],
[chatbot, chat_state]
).success(
gradio_visualize,
[chatbot, image],
[chatbot],
queue=False,
)
send.click(
gradio_ask,
[text_input, chatbot, chat_state, image, img_list, upload_flag, replace_flag],
[text_input, chatbot, chat_state, img_list, upload_flag, replace_flag], queue=False
).success(
gradio_stream_answer,
[chatbot, chat_state, img_list, temperature],
[chatbot, chat_state]
).success(
gradio_visualize,
[chatbot, image],
[chatbot],
queue=False,
)
clear.click(gradio_reset, [chat_state, img_list], [chatbot, image, text_input, chat_state, img_list], queue=False)
demo.launch(share=True, enable_queue=True)