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import gradio as gr
import ast
import numpy as np
from PIL import Image, ImageDraw
import torch
from torchvision.transforms import Compose, Resize, ToTensor, Normalize
from utils.model import init_model
from utils.tokenization_clip import SimpleTokenizer as ClipTokenizer
from fastapi.staticfiles import StaticFiles
from fileservice import app
def image_to_tensor(image_path):
image = Image.open(image_path).convert('RGB')
preprocess = Compose([
Resize([224, 224], interpolation=Image.BICUBIC),
lambda image: image.convert("RGB"),
ToTensor(),
Normalize((0.48145466, 0.4578275, 0.40821073), (0.26862954, 0.26130258, 0.27577711)),
])
image_data = preprocess(image)
return {'image': image_data}
def get_image_data(image_path):
image_input = image_to_tensor(image_path)
return image_input
def parse_bool_string(s):
try:
bool_list = ast.literal_eval(s)
if not isinstance(bool_list, list):
raise ValueError("The input string must represent a list.")
return bool_list
except (SyntaxError, ValueError) as e:
raise ValueError(f"Invalid input string: {e}")
def get_intervention_vector(selected_cells_bef, selected_cells_aft):
first_ = True
second_ = True
left_map = np.zeros((1, 14 * 14 + 1))
right_map = np.zeros((1, 14 * 14 + 1))
left_map[0, 1:] = np.reshape(selected_cells_bef, (1, 14 * 14))
right_map[0, 1:] = np.reshape(selected_cells_aft, (1, 14 * 14))
if np.count_nonzero(selected_cells_bef) == 0:
left_map[0, 0] = 1.0
first_ = False
if np.count_nonzero(selected_cells_aft) == 0:
right_map[0, 0] = 1.0
second_ = False
return left_map, right_map, first_, second_
def _get_rawimage(image_path):
# Pair x L x T x 3 x H x W
image = np.zeros((1, 3, 224,
224), dtype=np.float)
for i in range(1):
raw_image_data = get_image_data(image_path)
raw_image_data = raw_image_data['image']
image[i] = raw_image_data
return image
def greedy_decode(model, tokenizer, video, video_mask, gt_left_map, gt_right_map):
visual_output, left_map, right_map = model.get_sequence_visual_output(video, video_mask,
gt_left_map[:, 0, :].squeeze(), gt_right_map[:, 0, :].squeeze())
video_mask = torch.ones(visual_output.shape[0], visual_output.shape[1], device=visual_output.device).long()
input_caption_ids = torch.zeros(visual_output.shape[0], device=visual_output.device).data.fill_(tokenizer.vocab["<|startoftext|>"])
input_caption_ids = input_caption_ids.long().unsqueeze(1)
decoder_mask = torch.ones_like(input_caption_ids)
for i in range(32):
decoder_scores = model.decoder_caption(visual_output, video_mask, input_caption_ids, decoder_mask, get_logits=True)
next_words = decoder_scores[:, -1].max(1)[1].unsqueeze(1)
input_caption_ids = torch.cat([input_caption_ids, next_words], 1)
next_mask = torch.ones_like(next_words)
decoder_mask = torch.cat([decoder_mask, next_mask], 1)
return input_caption_ids[:, 1:].tolist(), left_map, right_map
# Dummy prediction function
def predict_image(image_bef, image_aft, json_data_bef, json_data_aft):
if image_bef is None:
return "No image provided", "", ""
if image_aft is None:
return "No image provided", "", ""
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
model = init_model('data/pytorch_model.pt', device)
tokenizer = ClipTokenizer()
selected_cells_bef = np.asarray(parse_bool_string(json_data_bef), np.int32)
selected_cells_aft = np.asarray(parse_bool_string(json_data_aft), np.int32)
left_map, right_map, first_, second_ = get_intervention_vector(selected_cells_bef, selected_cells_aft)
left_map, right_map = torch.from_numpy(left_map).unsqueeze(0), torch.from_numpy(right_map).unsqueeze(0)
bef_image = torch.from_numpy(_get_rawimage(image_bef)).unsqueeze(1)
aft_image = torch.from_numpy(_get_rawimage(image_aft)).unsqueeze(1)
image_pair = torch.cat([bef_image, aft_image], 1)
image_mask = torch.from_numpy(np.ones(2, dtype=np.long)).unsqueeze(0)
result_list, left_map, right_map = greedy_decode(model, tokenizer, image_pair, image_mask, left_map, right_map)
decode_text_list = tokenizer.convert_ids_to_tokens(result_list[0])
if "<|endoftext|>" in decode_text_list:
SEP_index = decode_text_list.index("<|endoftext|>")
decode_text_list = decode_text_list[:SEP_index]
if "!" in decode_text_list:
PAD_index = decode_text_list.index("!")
decode_text_list = decode_text_list[:PAD_index]
decode_text = decode_text_list.strip()
# Generate dummy predictions
pred = f"{decode_text}"
# Include information about selected cells
i, j = np.nonzero(selected_cells_bef)
selected_info_bef = f"{list(zip(i, j))}" if first_ else "No image patch was selected"
i, j = np.nonzero(selected_cells_aft)
selected_info_aft = f"{list(zip(i, j))}" if second_ else "No image patch was selected"
return pred, selected_info_bef, selected_info_aft
# Add grid to the image
def add_grid_to_image(image_path, grid_size=14):
if image_path is None:
return None
image = Image.open(image_path)
w, h = image.size
image = image.convert('RGBA')
draw = ImageDraw.Draw(image)
x_positions = np.linspace(0, w, grid_size + 1)
y_positions = np.linspace(0, h, grid_size + 1)
# Draw the vertical lines
for x in x_positions[1:-1]:
line = ((x, 0), (x, h))
draw.line(line, fill='white')
# Draw the horizontal lines
for y in y_positions[1:-1]:
line = ((0, y), (w, y))
draw.line(line, fill='white')
return image, h, w
# Handle cell selection
def handle_click(image, evt: gr.SelectData, selected_cells, image_path):
if image is None:
return None, []
grid_size = 14
image, h, w = add_grid_to_image(image_path, grid_size)
x_positions = np.linspace(0, w, grid_size + 1)
y_positions = np.linspace(0, h, grid_size + 1)
# Calculate which cell was clicked
for index, x in enumerate(x_positions[:-1]):
if evt.index[0] >= x and evt.index[0] <= x_positions[index+1]:
row = index
for index, y in enumerate(y_positions[:-1]):
if evt.index[1] >= y and evt.index[1] <= y_positions[index+1]:
col = index
cell_idx = (row, col)
# Toggle selection
if cell_idx in selected_cells:
selected_cells.remove(cell_idx)
else:
selected_cells.append(cell_idx)
# Add semi-transparent overlay for selected cells
highlight_layer = Image.new('RGBA', (w, h), (0, 0, 0, 0)) # Fully transparent layer
highlight_draw = ImageDraw.Draw(highlight_layer)
# Define a lighter green color with 40% transparency
light_green = (144, 238, 144, 102) # RGB = (144, 238, 144), Alpha = 102 (40% of 255)
for (row, col) in selected_cells:
cell_top_left = (x_positions[row], y_positions[col])
cell_bottom_right = (x_positions[row + 1], y_positions[col + 1])
highlight_draw.rectangle([cell_top_left, cell_bottom_right], fill=light_green, outline='white')
result_img = Image.alpha_composite(image.convert('RGBA'), highlight_layer)
return result_img, selected_cells
# Process example images
def process_example(image_path_bef, image_path_aft):
# Add grid to the example image
image_bef_grid, _, _ = add_grid_to_image(image_path_bef, 14)
image_aft_grid, _, _ = add_grid_to_image(image_path_aft, 14)
return image_bef_grid, image_aft_grid # Reset selected cells and store original image
def get_image_size(image_path):
w, h = Image.open(image_path).convert('RGB').size
return w, h
with gr.Blocks() as demo:
gr.Markdown("# TAB: Transformer Attention Bottleneck")
# Instructions
gr.Markdown("""
## Instructions:
1. Upload an image or select one from the examples
2. Click on grid cells to select/deselect them
3. Click the 'Predict' button to get model predictions
""")
height = gr.State(value=320)
width = gr.State(value=480)
sel_attn_bef = gr.Textbox("", visible=False)
sel_attn_aft = gr.Textbox("", visible=False)
with gr.Row():
with gr.Column(scale=1):
# Input components with grid overlay
image_bef = gr.Image(type="filepath", visible=True)
image_aft = gr.Image(type="filepath", visible=True)
predict_btn = gr.Button("Predict")
with gr.Column(scale=1):
html_text = f"""
<div id="container">
<canvas id="before" style="width: 100%; height: auto;"></canvas><img id="canvas-before" style="display:none;"/>
</div>
<br>
<div id="container">
<canvas id="after" style="width: 100%; height: auto;"></canvas><img id="canvas-after" style="display:none;"/>
</div>
"""
html = gr.HTML(html_text)
with gr.Row():
with gr.Column(scale=1):
# Example images
examples = gr.Examples(
examples=[["data/images/CLEVR_default_000572.png", "data/images/CLEVR_semantic_000572.png"],
["data/images/CLEVR_default_003339.png", "data/images/CLEVR_semantic_003339.png"]],
inputs=[image_bef, image_aft],
outputs=[width, height],
label="Example Images",
fn=get_image_size,
examples_per_page=5
)
with gr.Column(scale=1):
# Output components
prediction = gr.Textbox(label="Predicted caption")
selected_info_bef = gr.Textbox(label="Selected patches on before")
selected_info_aft = gr.Textbox(label="Selected patches on after")
# Connect the predict button to the prediction function
predict_btn.click(
fn=predict_image,
inputs=[image_bef, image_aft, sel_attn_bef, sel_attn_aft],
outputs=[prediction, selected_info_bef, selected_info_aft],
_js="(image_bef, image_aft, sel_attn_bef, sel_attn_aft) => { return [image_bef, image_aft, read_js_Data_bef(), read_js_Data_aft()]; }"
)
image_bef.change(
fn=None,
inputs=[image_bef],
outputs=[],
_js="(image_bef) => { importBackgroundBefore(image_bef); initializeEditorBefore(); return []; }",
)
image_aft.change(
fn=None,
inputs=[image_aft],
outputs=[],
_js="(image_aft) => { importBackgroundAfter(image_aft); initializeEditorAfter(); return []; }",
)
app.mount("/js", StaticFiles(directory="js"), name="js")
gr.mount_gradio_app(app, demo, path="/")