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import numpy as np
import seaborn as sns
import matplotlib
import matplotlib.pyplot as plt
from pathlib import Path
from typing import Dict, Any, Optional, Tuple, List, Union
def plot_images(
imgs: List[np.ndarray],
titles: Optional[List[str]] = None,
cmaps: Union[str, List[str]] = "gray",
dpi: int = 100,
size: Optional[int] = 5,
pad: float = 0.5,
) -> plt.Figure:
"""Plot a set of images horizontally.
Args:
imgs: a list of NumPy or PyTorch images, RGB (H, W, 3) or mono (H, W).
titles: a list of strings, as titles for each image.
cmaps: colormaps for monochrome images. If a single string is given,
it is used for all images.
dpi: DPI of the figure.
size: figure size in inches (width). If not provided, the figure
size is determined automatically.
pad: padding between subplots, in inches.
Returns:
The created figure.
"""
n = len(imgs)
if not isinstance(cmaps, list):
cmaps = [cmaps] * n
figsize = (size * n, size * 6 / 5) if size is not None else None
fig, ax = plt.subplots(1, n, figsize=figsize, dpi=dpi)
if n == 1:
ax = [ax]
for i in range(n):
ax[i].imshow(imgs[i], cmap=plt.get_cmap(cmaps[i]))
ax[i].get_yaxis().set_ticks([])
ax[i].get_xaxis().set_ticks([])
ax[i].set_axis_off()
for spine in ax[i].spines.values(): # remove frame
spine.set_visible(False)
if titles:
ax[i].set_title(titles[i])
fig.tight_layout(pad=pad)
return fig
def plot_color_line_matches(
lines: List[np.ndarray],
correct_matches: Optional[np.ndarray] = None,
lw: float = 2.0,
indices: Tuple[int, int] = (0, 1),
) -> matplotlib.figure.Figure:
"""Plot line matches for existing images with multiple colors.
Args:
lines: List of ndarrays of size (N, 2, 2) representing line segments.
correct_matches: Optional bool array of size (N,) indicating correct
matches. If not None, display wrong matches with a low alpha.
lw: Line width as float pixels.
indices: Indices of the images to draw the matches on.
Returns:
The modified matplotlib figure.
"""
n_lines = lines[0].shape[0]
colors = sns.color_palette("husl", n_colors=n_lines)
np.random.shuffle(colors)
alphas = np.ones(n_lines)
if correct_matches is not None:
alphas[~np.array(correct_matches)] = 0.2
fig = plt.gcf()
ax = typing.cast(List[matplotlib.axes.Axes], fig.axes)
assert len(ax) > max(indices)
axes = [ax[i] for i in indices]
fig.canvas.draw()
# Plot the lines
for a, l in zip(axes, lines):
# Transform the points into the figure coordinate system
transFigure = fig.transFigure.inverted()
endpoint0 = transFigure.transform(a.transData.transform(l[:, 0]))
endpoint1 = transFigure.transform(a.transData.transform(l[:, 1]))
fig.lines += [
matplotlib.lines.Line2D(
(endpoint0[i, 0], endpoint1[i, 0]),
(endpoint0[i, 1], endpoint1[i, 1]),
zorder=1,
transform=fig.transFigure,
c=colors[i],
alpha=alphas[i],
linewidth=lw,
)
for i in range(n_lines)
]
return fig
def make_matching_figure(
img0: np.ndarray,
img1: np.ndarray,
mkpts0: np.ndarray,
mkpts1: np.ndarray,
color: np.ndarray,
titles: Optional[List[str]] = None,
kpts0: Optional[np.ndarray] = None,
kpts1: Optional[np.ndarray] = None,
text: List[str] = [],
dpi: int = 75,
path: Optional[Path] = None,
pad: float = 0.0,
) -> Optional[plt.Figure]:
"""Draw image pair with matches.
Args:
img0: image0 as HxWx3 numpy array.
img1: image1 as HxWx3 numpy array.
mkpts0: matched points in image0 as Nx2 numpy array.
mkpts1: matched points in image1 as Nx2 numpy array.
color: colors for the matches as Nx4 numpy array.
titles: titles for the two subplots.
kpts0: keypoints in image0 as Kx2 numpy array.
kpts1: keypoints in image1 as Kx2 numpy array.
text: list of strings to display in the top-left corner of the image.
dpi: dots per inch of the saved figure.
path: if not None, save the figure to this path.
pad: padding around the image as a fraction of the image size.
Returns:
The matplotlib Figure object if path is None.
"""
# draw image pair
fig, axes = plt.subplots(1, 2, figsize=(10, 6), dpi=dpi)
axes[0].imshow(img0) # , cmap='gray')
axes[1].imshow(img1) # , cmap='gray')
for i in range(2): # clear all frames
axes[i].get_yaxis().set_ticks([])
axes[i].get_xaxis().set_ticks([])
for spine in axes[i].spines.values():
spine.set_visible(False)
if titles is not None:
axes[i].set_title(titles[i])
plt.tight_layout(pad=pad)
if kpts0 is not None:
assert kpts1 is not None
axes[0].scatter(kpts0[:, 0], kpts0[:, 1], c="w", s=5)
axes[1].scatter(kpts1[:, 0], kpts1[:, 1], c="w", s=5)
# draw matches
if mkpts0.shape[0] != 0 and mkpts1.shape[0] != 0:
fig.canvas.draw()
transFigure = fig.transFigure.inverted()
fkpts0 = transFigure.transform(axes[0].transData.transform(mkpts0))
fkpts1 = transFigure.transform(axes[1].transData.transform(mkpts1))
fig.lines = [
matplotlib.lines.Line2D(
(fkpts0[i, 0], fkpts1[i, 0]),
(fkpts0[i, 1], fkpts1[i, 1]),
transform=fig.transFigure,
c=color[i],
linewidth=2,
)
for i in range(len(mkpts0))
]
# freeze the axes to prevent the transform to change
axes[0].autoscale(enable=False)
axes[1].autoscale(enable=False)
axes[0].scatter(mkpts0[:, 0], mkpts0[:, 1], c=color[..., :3], s=4)
axes[1].scatter(mkpts1[:, 0], mkpts1[:, 1], c=color[..., :3], s=4)
# put txts
txt_color = "k" if img0[:100, :200].mean() > 200 else "w"
fig.text(
0.01,
0.99,
"\n".join(text),
transform=fig.axes[0].transAxes,
fontsize=15,
va="top",
ha="left",
color=txt_color,
)
# save or return figure
if path:
plt.savefig(str(path), bbox_inches="tight", pad_inches=0)
plt.close()
else:
return fig
def error_colormap(
err: np.ndarray, thr: float, alpha: float = 1.0
) -> np.ndarray:
"""
Create a colormap based on the error values.
Args:
err: Error values as a numpy array of shape (N,).
thr: Threshold value for the error.
alpha: Alpha value for the colormap, between 0 and 1.
Returns:
Colormap as a numpy array of shape (N, 4) with values in [0, 1].
"""
assert alpha <= 1.0 and alpha > 0, f"Invaid alpha value: {alpha}"
x = 1 - np.clip(err / (thr * 2), 0, 1)
return np.clip(
np.stack(
[2 - x * 2, x * 2, np.zeros_like(x), np.ones_like(x) * alpha], -1
),
0,
1,
)
np.random.seed(1995)
color_map = np.arange(100)
np.random.shuffle(color_map)
def fig2im(fig: matplotlib.figure.Figure) -> np.ndarray:
"""
Convert a matplotlib figure to a numpy array with RGB values.
Args:
fig: A matplotlib figure.
Returns:
A numpy array with shape (height, width, 3) and dtype uint8 containing
the RGB values of the figure.
"""
fig.canvas.draw()
(width, height) = fig.canvas.get_width_height()
buf_ndarray = np.frombuffer(fig.canvas.tostring_rgb(), dtype="u1")
return buf_ndarray.reshape(height, width, 3)
def draw_matches(
mkpts0: List[np.ndarray],
mkpts1: List[np.ndarray],
img0: np.ndarray,
img1: np.ndarray,
conf: np.ndarray,
titles: Optional[List[str]] = None,
dpi: int = 150,
path: Optional[str] = None,
pad: float = 0.5,
) -> np.ndarray:
"""
Draw matches between two images.
Args:
mkpts0: List of matches from the first image, with shape (N, 2)
mkpts1: List of matches from the second image, with shape (N, 2)
img0: First image, with shape (H, W, 3)
img1: Second image, with shape (H, W, 3)
conf: Confidence values for the matches, with shape (N,)
titles: Optional list of title strings for the plot
dpi: DPI for the saved image
path: Optional path to save the image to. If None, the image is not saved.
pad: Padding between subplots
Returns:
The figure as a numpy array with shape (height, width, 3) and dtype uint8
containing the RGB values of the figure.
"""
thr = 5e-4
thr = 0.5
color = error_colormap(conf, thr, alpha=0.1)
text = [
"image name",
f"#Matches: {len(mkpts0)}",
]
if path:
fig2im(
make_matching_figure(
img0,
img1,
mkpts0,
mkpts1,
color,
titles=titles,
text=text,
path=path,
dpi=dpi,
pad=pad,
)
)
else:
return fig2im(
make_matching_figure(
img0,
img1,
mkpts0,
mkpts1,
color,
titles=titles,
text=text,
pad=pad,
dpi=dpi,
)
)
def draw_image_pairs(
img0: np.ndarray,
img1: np.ndarray,
text: List[str] = [],
dpi: int = 75,
path: Optional[str] = None,
pad: float = 0.5,
) -> np.ndarray:
"""Draw image pair horizontally.
Args:
img0: First image, with shape (H, W, 3)
img1: Second image, with shape (H, W, 3)
text: List of strings to print. Each string is a new line.
dpi: DPI of the figure.
path: Path to save the image to. If None, the image is not saved and
the function returns the figure as a numpy array with shape
(height, width, 3) and dtype uint8 containing the RGB values of the
figure.
pad: Padding between subplots
Returns:
The figure as a numpy array with shape (height, width, 3) and dtype uint8
containing the RGB values of the figure, or None if path is not None.
"""
# draw image pair
fig, axes = plt.subplots(1, 2, figsize=(10, 6), dpi=dpi)
axes[0].imshow(img0) # , cmap='gray')
axes[1].imshow(img1) # , cmap='gray')
for i in range(2): # clear all frames
axes[i].get_yaxis().set_ticks([])
axes[i].get_xaxis().set_ticks([])
for spine in axes[i].spines.values():
spine.set_visible(False)
plt.tight_layout(pad=pad)
# put txts
txt_color = "k" if img0[:100, :200].mean() > 200 else "w"
fig.text(
0.01,
0.99,
"\n".join(text),
transform=fig.axes[0].transAxes,
fontsize=15,
va="top",
ha="left",
color=txt_color,
)
# save or return figure
if path:
plt.savefig(str(path), bbox_inches="tight", pad_inches=0)
plt.close()
else:
return fig2im(fig)
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