EVREAL / app.py
ercanburak's picture
work even with one video
026b32c
raw
history blame
9.61 kB
import os
import subprocess
import glob
import streamlit as st
from utils import get_configs, get_display_names, get_path_for_viz, get_video_height, get_text_str
# st.header("EVREAL - Event-based Video Reconstruction Evaluation and Analysis Library")
#
# paper_link = "https://arxiv.org/abs/2305.00434"
# code_link = "https://github.com/ercanburak/EVREAL"
# page_link = "https://ercanburak.github.io/evreal.html"
# instructions_video = "https://www.youtube.com/watch?v="
#
# st.markdown("Paper: " + paper_link, unsafe_allow_html=True)
# st.markdown("Code: " + paper_link, unsafe_allow_html=True)
# st.markdown("Page: " + paper_link, unsafe_allow_html=True)
# st.markdown("Please see this video for instructions on how to use this tool: " + instructions_video, unsafe_allow_html=True)
@st.cache_data(show_spinner="Retrieving results...")
def retrieve_results(selected_dataset, selected_sequence, selected_models, selected_metrics, selected_visualizations):
gt_only_viz = [viz for viz in selected_visualizations if viz['viz_type'] == 'gt_only']
model_only_viz = [viz for viz in selected_visualizations if viz['viz_type'] == 'model_only']
both_viz = [viz for viz in selected_visualizations if viz['viz_type'] == 'both']
recon_viz = {"name": "recon", "display_name": "Reconstruction", "viz_type": "both", "gt_type": "frame"}
ground_truth = {"name": "gt", "display_name": "Ground Truth", "model_id": "groundtruth"}
model_viz = [recon_viz] + both_viz + selected_metrics + model_only_viz
num_model_rows = len(model_viz)
gt_viz = []
if selected_dataset['has_frames']:
gt_viz.append(recon_viz)
gt_viz.extend([viz for viz in both_viz if viz['gt_type'] == 'frame'])
gt_viz.extend([viz for viz in gt_only_viz if viz['gt_type'] == 'frame'])
gt_viz.extend([viz for viz in both_viz if viz['gt_type'] == 'event'])
gt_viz.extend([viz for viz in gt_only_viz if viz['gt_type'] == 'event'])
num_gt_rows = len(gt_viz)
num_rows = max(num_model_rows, num_gt_rows)
# total_videos_needed = len(selected_models) * num_model_rows + num_gt_rows
if len(gt_viz) > 0:
selected_models.append(ground_truth)
padding = 2
font_size = 20
num_cols = len(selected_models)
crop_str = "crop=trunc(iw/2)*2:trunc(ih/2)*2"
pad_str = "pad=ceil(iw/2)*2+{}:ceil(ih/2)*2+{}:{}:{}:white".format(padding*2, padding*2, padding, padding)
num_elements = num_rows * num_cols
# remove previous temp data
files = glob.glob('temp_data/temp_*.mp4')
for f in files:
os.remove(f)
w = selected_dataset["width"]
h = selected_dataset["height"]
input_filter_parts = []
xstack_input_parts = []
layout_parts = []
video_paths = []
row_heights = [""]*num_rows
gt_viz_indices = []
if len(model_viz) > 1:
left_pad = (font_size*0.7)*max([len(viz['display_name']) for viz in model_viz[1:]]) + padding*2
else:
left_pad = 0
for row_idx in range(num_rows):
for col_idx in range(num_cols):
vid_idx = len(video_paths)
# progress_bar.progress(float(vid_idx) / total_videos_needed)
cur_model = selected_models[col_idx]
if cur_model['name'] == "gt":
if row_idx < len(gt_viz):
video_path = get_path_for_viz(base_data_dir, selected_dataset, selected_sequence, cur_model, gt_viz[row_idx])
if not os.path.isfile(video_path):
raise ValueError("Could not find video: " + video_path)
gt_viz_indices.append(vid_idx)
else:
continue
else:
if row_idx < len(model_viz):
video_path = get_path_for_viz(base_data_dir, selected_dataset, selected_sequence, cur_model, model_viz[row_idx])
if not os.path.isfile(video_path):
raise ValueError("Could not find video: " + video_path)
else:
continue
if row_heights[row_idx] == "":
row_heights[row_idx] = "h{}".format(vid_idx)
if row_idx == 0:
pad_height = font_size+padding*2
pad_txt_str = ",pad={}:{}:0:{}:white".format(w+padding*2, h+font_size+padding*4, pad_height)
text_str = get_text_str(pad_height, w, cur_model['display_name'], font_size)
pad_txt_str = pad_txt_str + "," + text_str
elif row_idx > 0 and col_idx == 0:
pad_txt_str = ",pad={}:ih:{}:0:white".format(w + left_pad + padding*2, left_pad)
text_str = get_text_str("h", left_pad, model_viz[row_idx]['display_name'], font_size)
pad_txt_str = pad_txt_str + "," + text_str
else:
pad_txt_str = ""
input_filter_part = "[{}:v]scale={}:-1,{}{}[v{}]".format(vid_idx, w, pad_str, pad_txt_str, vid_idx)
input_filter_parts.append(input_filter_part)
xstack_input_part = "[v{}]".format(vid_idx)
xstack_input_parts.append(xstack_input_part)
video_paths.append(video_path)
if row_idx == 0 or col_idx > 0:
layout_w_parts = [str(left_pad)] + ["w{}".format(i) for i in range(col_idx)]
layout_w = "+".join(layout_w_parts)
else:
layout_w = "+".join(["w{}".format(i) for i in range(col_idx)]) if col_idx > 0 else "0"
if cur_model['name'] == "gt":
layout_h = "+".join(["h{}".format(i) for i in gt_viz_indices[:-1]]) if row_idx > 0 else "0"
else:
layout_h = "+".join(row_heights[:row_idx]) if row_idx > 0 else "0"
layout_part = layout_w + "_" + layout_h
layout_parts.append(layout_part)
inputs_str = " ".join(["-i " + video_path for video_path in video_paths])
num_inputs = len(video_paths)
input_scaling_str = ";".join(input_filter_parts)
xstack_input_str = "".join(xstack_input_parts)
layout_str = "|".join(layout_parts)
# opt = "-c:v libx264 -preset veryslow -crf 18 -c:a copy"
opt = ""
# opt_fill = ":fill=black"
opt_fill = ":fill=white"
# opt_fill = ""
if num_inputs > 1:
ffmpeg_command_str = "ffmpeg -y " + inputs_str + " -filter_complex \"" + input_scaling_str + ";" + xstack_input_str + "xstack=inputs=" + str(num_inputs) + ":layout=" + layout_str + opt_fill + "\"" + opt + " output.mp4"
else:
# remove last paranthesis
idx = input_scaling_str.rfind("[")
input_scaling_str = input_scaling_str[:idx]
ffmpeg_command_str = "ffmpeg -y " + inputs_str + " -filter_complex \"" + input_scaling_str + "\"" + opt + " output.mp4"
print(ffmpeg_command_str)
ret = subprocess.call(ffmpeg_command_str, shell=True)
if ret != 0:
return None
video_file = open('output.mp4', 'rb')
video_bytes = video_file.read()
return video_bytes
st.title("Result Analysis Tool")
base_data_dir = "data"
dataset_cfg_path = os.path.join("cfg", "dataset")
model_cfg_path = os.path.join("cfg", "model")
metric_cfg_path = os.path.join("cfg", "metric")
viz_cfg_path = os.path.join("cfg", "viz")
datasets = get_configs(dataset_cfg_path)
models = get_configs(model_cfg_path)
metrics = get_configs(metric_cfg_path)
visualizations = get_configs(viz_cfg_path)
dataset_display_names = get_display_names(datasets)
model_display_names = get_display_names(models)
metric_display_names = get_display_names(metrics)
viz_display_names = get_display_names(visualizations)
assert len(set(dataset_display_names)) == len(dataset_display_names), "Dataset display names are not unique"
assert len(set(model_display_names)) == len(model_display_names), "Model display names are not unique"
assert len(set(metric_display_names)) == len(metric_display_names), "Metric display names are not unique"
assert len(set(viz_display_names)) == len(viz_display_names), "Viz display names are not unique"
selected_model_names = st.multiselect('Select multiple methods to compare', model_display_names)
selected_models = [model for model in models if model['display_name'] in selected_model_names]
col1, col2 = st.columns(2)
with col1:
selected_dataset_name = st.selectbox('Select dataset', options=dataset_display_names)
selected_dataset = [dataset for dataset in datasets if dataset['display_name'] == selected_dataset_name][0]
with col2:
selected_sequence = st.selectbox('Select sequence', options=selected_dataset["sequences"].keys())
usable_metrics = [metric for metric in metrics if metric['no_ref'] == selected_dataset['no_ref']]
usable_metric_display_names = get_display_names(usable_metrics)
selected_metric_names = st.multiselect('Select metrics to display', usable_metric_display_names)
selected_metrics = [metric for metric in usable_metrics if metric['display_name'] in selected_metric_names]
if not selected_dataset['has_frames']:
usable_viz = [viz for viz in visualizations if viz['gt_type'] != 'frame']
else:
usable_viz = visualizations
usable_viz_display_names = get_display_names(usable_viz)
selected_viz = st.multiselect('Select other visualizations to display', usable_viz_display_names)
selected_visualizations = [viz for viz in visualizations if viz['display_name'] in selected_viz]
if not st.button('Get Results'):
st.stop()
video_bytes = retrieve_results(selected_dataset, selected_sequence, selected_models, selected_metrics, selected_visualizations)
if video_bytes is None:
st.error("Error while generating video.")
st.stop()
st.video(video_bytes)