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analysis.py
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324 lines (276 loc) · 9.24 KB
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import io
import time
import traceback
from itertools import cycle, islice, product
import av
import matplotlib.pyplot as plt
import numpy as np
import pandas as pd
from omegaconf import OmegaConf
from huecodec import codec as hc
N_ENCDEC_FRAMES = 1000
SHOW_PLOTS = False
MATRIX = {
"zrange": [(0.0, 2.0), (0.0, 4.0)],
"linear": [True],
"codec": [
{
"variant": "hue-only",
"name": "none",
},
{
"variant": "h264-lossless-cpu",
"name": "libx264",
"options": {"qp": "0"}, # use qp instead of crf for 10bit pixfmt
"pix_fmt": "yuv444p10le", # use 10bit to avoid lossy conversion from rgb
},
{
"variant": "h264-default-cpu",
"name": "libx264",
"options": None,
"pix_fmt": "yuv420p",
},
{
"variant": "h264-lossless-gpu",
"name": "h264_nvenc",
"options": {"tune": "lossless"},
"pix_fmt": "gbrp", # planar gbr, only way i could make this lossless
},
{
"variant": "h264-tuned-gpu",
"name": "h264_nvenc",
"options": {"preset": "p7", "rc": "vbr", "pq": "10", "profile": "high"},
"pix_fmt": "gbrp", # planar gbr, only way i could make this lossless
},
{
"variant": "h265-lossless-gpu",
"name": "hevc_nvenc",
"options": {"tune": "lossless"},
"pix_fmt": "gbrp", # planar gbr, only way i could make this lossless
},
{
"variant": "h264-default-gpu",
"name": "h264_nvenc",
"options": None,
"pix_fmt": "yuv420p",
},
],
}
def generate_synthetic_depth_images(n: int, speed: int = 10):
t = np.linspace(0, 1, 512)
d_col = np.cos(2 * np.pi / 0.25 * t)
d_row = np.cos(2 * np.pi / 0.25 * t)
d = d_col[None, :] + d_row[:, None]
d = (d - d.min()) * 0.5 # [0..2]
gen = np.random.default_rng(123)
# Delete random rectangles to mimick hard-edges
def rr():
x1 = gen.integers(0, d.shape[1])
y1 = gen.integers(0, d.shape[0])
x2 = x1 + gen.integers(d.shape[1] - x1)
y2 = y1 + gen.integers(d.shape[0] - y1)
return slice(y1, y2), slice(x1, x2)
for _ in range(n):
dmod = np.roll(d, -speed, axis=0).copy()
dmod[*rr()] = 0
dmod[*rr()] = 0
dmod[*rr()] = 0
dmod[*rr()] = 0
yield dmod
def hue_enc_dec(gt, zrange, inv_depth, **kwargs):
t = time.perf_counter()
# process N_ENCDEC_FRAMES by cycling batched gt
for depth in islice(cycle(gt), N_ENCDEC_FRAMES):
e = hc.depth2rgb(depth, zrange=zrange, sanitized=True, inv_depth=inv_depth)
tenc = time.perf_counter() - t # not very accurate, use benchmarks
t = time.perf_counter()
for rgb in islice(cycle([e]), N_ENCDEC_FRAMES):
d = hc.rgb2depth(rgb, zrange=zrange, inv_depth=inv_depth)
tdec = time.perf_counter() - t
e = hc.depth2rgb(gt, zrange=zrange, sanitized=True, inv_depth=inv_depth)
d = hc.rgb2depth(e, zrange=zrange, inv_depth=inv_depth)
factor = gt.shape[0] / N_ENCDEC_FRAMES
return d, {
"tenc": tenc * factor,
"tdec": tdec * factor,
"nbytes": e.nbytes,
}
def av_enc_dec(gt, zrange, inv_depth, codec):
file = io.BytesIO()
output = av.open(file, "w", format="mp4")
stream = output.add_stream(codec["name"], rate=1, options=codec["options"])
stream.width = gt.shape[2]
stream.height = gt.shape[1]
stream.pix_fmt = codec["pix_fmt"]
# to reduce impact of overhead of the codec,
# we virtually repeat the experiment
t = time.perf_counter()
for d in islice(cycle(gt), N_ENCDEC_FRAMES):
rgb = hc.depth2rgb(d, zrange=zrange, sanitized=True, inv_depth=inv_depth)
frame = av.VideoFrame.from_ndarray(rgb, format="rgb24")
packet = stream.encode(frame)
output.mux(packet)
packet = stream.encode(None)
output.mux(packet)
output.close()
tenc = time.perf_counter() - t
file.seek(0)
input = av.open(file, "r")
t = time.perf_counter()
ds = []
for fidx, f in enumerate(input.decode(video=0)):
rgb = f.to_rgb().to_ndarray()
d = hc.rgb2depth(rgb, zrange=zrange, inv_depth=inv_depth)
if fidx < gt.shape[0]:
ds.append(d)
tdec = time.perf_counter() - t
factor = gt.shape[0] / N_ENCDEC_FRAMES
return np.stack(ds, 0), {
"nbytes": file.getbuffer().nbytes * factor,
"tenc": tenc * factor,
"tdec": tdec * factor,
}
def analyze(gt, pred, outprefix):
extra = {}
if isinstance(pred, tuple):
pred, extra = pred
err = abs(gt - pred)
fig, ax = plt.subplots()
bins = np.logspace(-5, -2, 20)
bins = np.concatenate((bins, [0.011]))
xticks = bins[[0, 2, 5, 10, -1]]
xlabels = [f"{b:.4f}" for b in xticks]
xlabels[-1] = "0.01+"
ax.hist(
np.clip(err, bins[0], bins[-1] - 1e-12).reshape(-1), bins=bins, density=False
)
ax.xaxis.grid(True)
ax.set_xlabel("abs error [m]")
ax.set_ylabel("count")
ax.set_xticks(xticks)
ax.set_xticklabels(xlabels)
ax.set_xscale("log")
fig.savefig(f"{outprefix}.hist.png", dpi=300)
if SHOW_PLOTS:
plt.show()
mse = np.nanmean(np.square(gt - pred))
rmse = np.sqrt(mse)
return {
"abs_err_mean": err.mean().item(),
"abs_err_std": err.std().item(),
"abs_err_1mm": (err < 1e-3).sum() / np.prod(err.shape),
"abs_err_5mm": (err < 5e-3).sum() / np.prod(err.shape),
"abs_err_1cm": (err < 1e-2).sum() / np.prod(err.shape),
"nan": ((~np.isfinite(err)).sum()) / np.prod(err.shape),
"mse": mse.item(),
"rmse": rmse.item(),
**extra,
}
def run(cfg: OmegaConf, gt, zrange, linear, codec, outprefix):
method = hue_enc_dec if codec["variant"] == "hue-only" else av_enc_dec
try:
pred = method(gt, zrange=zrange, inv_depth=not linear, codec=codec)
report = analyze(gt, pred, outprefix=outprefix)
except Exception:
traceback.print_exc()
report = {}
return report
def execute_variants(cfg: OmegaConf, gt):
var_filter = cfg.get("variant", None)
if isinstance(var_filter, str):
var_filter = [var_filter]
gen = product(MATRIX["codec"], MATRIX["zrange"], MATRIX["linear"])
reports = []
for codec, zrange, linear in gen:
title = f'{codec["variant"]=}/{linear=}/{zrange=}'
prefix = f'tmp/{codec["variant"]}.{int(zrange[1]-zrange[0])}'
if var_filter is None or codec["variant"] in var_filter:
print(f"running {title}")
report = run(cfg, gt, zrange, linear, codec, prefix)
report["variant"] = codec["variant"]
report["zrange"] = zrange
report["title"] = title
reports.append(report)
else:
print(f"skipping {title}")
return reports
def plot_depth(d, zrange, name):
fig = plt.figure(figsize=plt.figaspect(1 / 2.3), layout="constrained")
gs = fig.add_gridspec(1, 3, width_ratios=[0.05, 1, 1], wspace=0.1)
ax = fig.add_subplot(gs[1])
im = ax.imshow(d)
ax = fig.add_subplot(gs[0])
plt.colorbar(im, cax=ax)
ax.yaxis.set_ticks_position("left")
ax = fig.add_subplot(gs[2])
im = ax.imshow(hc.depth2rgb(d, zrange=zrange))
fig.savefig(f"tmp/{name}.png", dpi=300)
plt.close(fig)
def main():
global N_ENCDEC_FRAMES, SHOW_PLOTS
cfg = OmegaConf.merge(
OmegaConf.create({"nframes": 1000, "show": False}),
OmegaConf.from_cli(),
)
N_ENCDEC_FRAMES = cfg.nframes
SHOW_PLOTS = cfg.show
datapath = cfg.get("data", None)
if datapath is None:
print("Generating synthetic dataset")
gt = np.stack(list(generate_synthetic_depth_images(100)), 0)
plot_depth(gt[0], (0.0, 2.0), "synthetic")
else:
print("Loading dataset")
gt = np.load(datapath).astype(np.float32)
gt[~np.isfinite(gt)] = 2.0
plot_depth(gt[0], (0.0, 2.0), "real")
# warmup
hue_enc_dec(gt, (0.0, 2.0), False)
# run variants
reports = execute_variants(cfg, gt)
# Format
df = pd.DataFrame(reports)
del df["title"]
del df["mse"]
del df["abs_err_std"]
del df["abs_err_mean"]
df = df.reindex(
columns=[
"variant",
"zrange",
"rmse",
"abs_err_1mm",
"abs_err_5mm",
"abs_err_1cm",
"nan",
"tenc",
"tdec",
"nbytes",
]
)
df["tenc"] /= len(gt) / 1e3 # msec/frame
df["tdec"] /= len(gt) / 1e3 # msec/frame
df["nbytes"] /= len(gt) * 1024 # kb/frame
df = df.rename(
columns={
"zrange": "zrange [m]",
"rmse": "rmse [m]",
"abs_err_1mm": "<1mm [%]",
"abs_err_5mm": "<5mm [%]",
"abs_err_1cm": "<1cm [%]",
"nan": "failed [%]",
"tenc": "tenc [ms/img]",
"tdec": "tdec [ms/img]",
"nbytes": "size [kb/img]",
}
)
print(df)
print()
print(
df.to_markdown(
index=False,
floatfmt=("", "", ".5f", ".3f", ".3f", ".3f", ".3f", ".2f", ".2f", ".2f"),
)
)
if __name__ == "__main__":
main()