latent-space-theories / pages /1_Textiles_Disentanglement.py
ludusc's picture
working version
ae2da92
raw
history blame
No virus
11.3 kB
import streamlit as st
import pickle
import pandas as pd
import numpy as np
import random
import torch
from matplotlib.backends.backend_agg import RendererAgg
from backend.disentangle_concepts import *
import torch_utils
import dnnlib
import legacy
_lock = RendererAgg.lock
st.set_page_config(layout='wide')
BACKGROUND_COLOR = '#bcd0e7'
SECONDARY_COLOR = '#bce7db'
st.title('Disentanglement studies on the Textile Dataset')
st.markdown(
"""
This is a demo of the Disentanglement studies on the [iMET Textiles Dataset](https://www.metmuseum.org/art/collection/search/85531).
""",
unsafe_allow_html=False,)
annotations_file = './data/textile_annotated_files/seeds0000-100000_S.pkl'
with open(annotations_file, 'rb') as f:
annotations = pickle.load(f)
concept_vectors = pd.read_csv('./data/stored_vectors/scores_colors_hsv.csv')
concept_vectors['vector'] = [np.array([float(xx) for xx in x]) for x in concept_vectors['vector'].str.split(', ')]
concept_vectors['score'] = concept_vectors['score'].astype(float)
concept_vectors['sign'] = [True if 'sign:True' in val else False for val in concept_vectors['kwargs']]
concept_vectors['extremes'] = [True if 'extremes method:True' in val else False for val in concept_vectors['kwargs']]
concept_vectors['regularization'] = [float(val.split(',')[1].strip('regularization: ')) if 'regularization:' in val else False for val in concept_vectors['kwargs']]
concept_vectors['cl_method'] = [val.split(',')[0].strip('classification method:') if 'classification method:' in val else False for val in concept_vectors['kwargs']]
concept_vectors['num_factors'] = [int(val.split(',')[1].strip('number of factors:')) if 'number of factors:' in val else False for val in concept_vectors['kwargs']]
concept_vectors = concept_vectors.sort_values('score', ascending=False).reset_index()
with dnnlib.util.open_url('./data/textile_model_files/network-snapshot-005000.pkl') as f:
model = legacy.load_network_pkl(f)['G_ema'].to('cpu') # type: ignore
COLORS_LIST = ['Gray', 'Red Orange', 'Yellow', 'Green', 'Light Blue', 'Blue', 'Purple', 'Pink']
if 'image_id' not in st.session_state:
st.session_state.image_id = 0
if 'color_ids' not in st.session_state:
st.session_state.concept_ids = COLORS_LIST[-1]
if 'space_id' not in st.session_state:
st.session_state.space_id = 'W'
if 'color_lambda' not in st.session_state:
st.session_state.color_lambda = 7
if 'saturation_lambda' not in st.session_state:
st.session_state.saturation_lambda = 0
if 'value_lambda' not in st.session_state:
st.session_state.value_lambda = 0
if 'sign' not in st.session_state:
st.session_state.sign = False
if 'extremes' not in st.session_state:
st.session_state.extremes = False
if 'regularization' not in st.session_state:
st.session_state.regularization = False
if 'cl_method' not in st.session_state:
st.session_state.cl_method = False
if 'num_factors' not in st.session_state:
st.session_state.num_factors = False
if 'best' not in st.session_state:
st.session_state.best = True
# def on_change_random_input():
# st.session_state.image_id = st.session_state.image_id
# ----------------------------- INPUT ----------------------------------
st.header('Input')
input_col_1, input_col_2, input_col_3, input_col_4 = st.columns(4)
# --------------------------- INPUT column 1 ---------------------------
with input_col_1:
with st.form('image_form'):
# image_id = st.number_input('Image ID: ', format='%d', step=1)
st.write('**Choose or generate a random image to test the disentanglement**')
chosen_image_id_input = st.empty()
image_id = chosen_image_id_input.number_input('Image ID:', format='%d', step=1, value=st.session_state.image_id)
choose_image_button = st.form_submit_button('Choose the defined image')
random_id = st.form_submit_button('Generate a random image')
if random_id:
image_id = random.randint(0, 100000)
st.session_state.image_id = image_id
chosen_image_id_input.number_input('Image ID:', format='%d', step=1, value=st.session_state.image_id)
if choose_image_button:
image_id = int(image_id)
st.session_state.image_id = image_id
with input_col_2:
with st.form('text_form_1'):
st.write('**Choose color to vary**')
type_col = st.selectbox('Color:', tuple(COLORS_LIST), index=7)
colors_button = st.form_submit_button('Choose the defined color')
st.write('**Set range of change**')
chosen_color_lambda_input = st.empty()
color_lambda = chosen_color_lambda_input.number_input('Lambda:', min_value=-100, step=1, value=7)
color_lambda_button = st.form_submit_button('Choose the defined lambda for color')
if colors_button or color_lambda_button:
st.session_state.image_id = image_id
st.session_state.concept_ids = type_col
st.session_state.color_lambda = color_lambda
with input_col_3:
with st.form('text_form'):
st.write('**Saturation variation**')
chosen_saturation_lambda_input = st.empty()
saturation_lambda = chosen_saturation_lambda_input.number_input('Lambda:', min_value=-100, step=1, key=0, value=0)
saturation_lambda_button = st.form_submit_button('Choose the defined lambda for saturation')
st.write('**Value variation**')
chosen_value_lambda_input = st.empty()
value_lambda = chosen_value_lambda_input.number_input('Lambda:', min_value=-100, step=1, key=1, value=0)
value_lambda_button = st.form_submit_button('Choose the defined lambda for salue')
if saturation_lambda_button or value_lambda_button:
st.session_state.saturation_lambda = int(saturation_lambda)
st.session_state.value_lambda = int(value_lambda)
with input_col_4:
with st.form('text_form_2'):
st.write('Use best options')
best = st.selectbox('Option:', tuple([True, False]), index=0)
st.write('Options for StyleSpace (not available for Saturation and Value)')
sign = st.selectbox('Sign option:', tuple([True, False]), index=1)
num_factors = st.selectbox('Number of factors option:', tuple([1, 5, 10, 20, False]), index=4)
st.write('Options for InterFaceGAN (not available for Saturation and Value)')
cl_method = st.selectbox('Classification method option:', tuple(['LR', 'SVM', False]), index=2)
regularization = st.selectbox('Regularization option:', tuple([0.1, 1.0, False]), index=2)
st.write('Options for InterFaceGAN (only for Saturation and Value)')
extremes = st.selectbox('Extremes option:', tuple([True, False]), index=1)
choose_options_button = st.form_submit_button('Choose the defined options')
# st.write('**Choose a latent space to disentangle**')
# # chosen_text_id_input = st.empty()
# # concept_id = chosen_text_id_input.text_input('Concept:', value=st.session_state.concept_id)
# space_id = st.selectbox('Space:', tuple(['Z', 'W']))
if choose_options_button:
st.session_state.sign = sign
st.session_state.num_factors = num_factors
st.session_state.cl_method = cl_method
st.session_state.regularization = regularization
st.session_state.extremes = extremes
st.session_state.best = best
# with input_col_4:
# with st.form('Network specifics:'):
# st.write('**Choose a latent space to use**')
# space_id = st.selectbox('Space:', tuple(['W']))
# choose_text_button = st.form_submit_button('Choose the defined concept and space to disentangle')
# st.write('**Select hierarchical levels to manipulate**')
# layers = st.multiselect('Layers:', tuple(range(14)))
# if len(layers) == 0:
# layers = None
# print(layers)
# layers_button = st.form_submit_button('Choose the defined layers')
# ---------------------------- SET UP OUTPUT ------------------------------
epsilon_container = st.empty()
st.header('Image Manipulation')
st.subheader('Using selected directions')
header_col_1, header_col_2 = st.columns([1,1])
output_col_1, output_col_2 = st.columns([1,1])
# # prediction error container
# error_container = st.empty()
# smoothgrad_header_container = st.empty()
# # smoothgrad container
# smooth_head_1, smooth_head_2, = st.columns([1,1,])
# smoothgrad_col_1, smoothgrad_col_2 = st.columns([1,1])
# ---------------------------- DISPLAY COL 1 ROW 1 ------------------------------
with header_col_1:
st.write(f'Original image')
with header_col_2:
if st.session_state.best:
color_separation_vector, performance_color = concept_vectors[concept_vectors['color'] == st.session_state.concept_ids].reset_index().loc[0, ['vector', 'score']]
saturation_separation_vector, performance_saturation = concept_vectors[concept_vectors['color'] == 'Saturation'].reset_index().loc[0, ['vector', 'score']]
value_separation_vector, performance_value = concept_vectors[concept_vectors['color'] == 'Value'].reset_index().loc[0, ['vector', 'score']]
else:
tmp = concept_vectors[concept_vectors['color'] == st.session_state.concept_ids]
tmp = tmp[tmp['sign'] == st.session_state.sign][tmp['num_factors'] == st.session_state.num_factors][tmp['cl_method'] == st.session_state.cl_method][tmp['regularization'] == st.session_state.regularization]
color_separation_vector, performance_color = tmp.reset_index().loc[0, ['vector', 'score']]
tmp_value = concept_vectors[concept_vectors['color'] == 'Value'][concept_vectors['extremes'] == st.session_state.extremes]
value_separation_vector, performance_value = tmp_value.reset_index().loc[0, ['vector', 'score']]
tmp_sat = concept_vectors[concept_vectors['color'] == 'Saturation'][concept_vectors['extremes'] == st.session_state.extremes]
saturation_separation_vector, performance_saturation = tmp_sat.reset_index().loc[0, ['vector', 'score']]
st.write(f'Change in {st.session_state.concept_ids} of {np.round(st.session_state.color_lambda, 2)}, in saturation of {np.round(st.session_state.saturation_lambda, 2)}, in value of {np.round(st.session_state.value_lambda, 2)}. - Performance color vector: {performance_color}, saturation vector: {performance_saturation/100}, value vector: {performance_value/100}')
# ---------------------------- DISPLAY COL 2 ROW 1 ------------------------------
if st.session_state.space_id == 'Z':
original_image_vec = annotations['z_vectors'][st.session_state.image_id]
else:
original_image_vec = annotations['w_vectors'][st.session_state.image_id]
img = generate_original_image(original_image_vec, model, latent_space=st.session_state.space_id)
with output_col_1:
st.image(img)
with output_col_2:
image_updated = generate_composite_images(model, original_image_vec, [color_separation_vector, saturation_separation_vector, value_separation_vector], lambdas=[st.session_state.color_lambda, st.session_state.saturation_lambda, st.session_state.value_lambda])
st.image(image_updated)