Saya memiliki program dengan tokoh interaktif di mana kadang-kadang banyak seniman digambar. Dalam gambar ini, Anda juga dapat memperbesar dan menggeser menggunakan mouse. Namun, performace selama zoom panning tidak terlalu bagus karena setiap artis selalu digambar ulang. Apakah ada cara untuk memeriksa artis mana yang ada di area yang sedang ditampilkan dan hanya menggambar ulang mereka? (Dalam contoh di bawah ini perfomace masih relatif baik, tetapi dapat diperburuk dengan menggunakan seniman yang lebih kompleks atau lebih rumit)
Saya memiliki masalah performa yang sama dengan hover
metode yang setiap kali dipanggil berlari canvas.draw()
pada akhirnya. Tapi seperti yang Anda lihat, saya menemukan solusi yang rapi untuk itu dengan memanfaatkan caching dan mengembalikan latar belakang sumbu (berdasarkan ini ). Ini secara signifikan meningkatkan kinerja dan sekarang bahkan dengan banyak artis berjalan sangat lancar. Mungkin ada cara serupa untuk melakukan ini tetapi untuk pan
dan zoom
metode?
Maaf untuk sampel kode panjang, sebagian besar tidak relevan secara langsung untuk pertanyaan tetapi diperlukan untuk contoh yang berfungsi untuk menyoroti masalah ini.
EDIT
Saya memperbarui MWE ke sesuatu yang lebih mewakili kode saya yang sebenarnya.
import numpy as np
import numpy as np
import sys
import matplotlib.pyplot as plt
from matplotlib.backends.backend_qt5agg import \
FigureCanvasQTAgg
import matplotlib.patheffects as PathEffects
from matplotlib.text import Annotation
from matplotlib.collections import LineCollection
from PyQt5.QtWidgets import QApplication, QVBoxLayout, QDialog
def check_limits(base_xlim, base_ylim, new_xlim, new_ylim):
if new_xlim[0] < base_xlim[0]:
overlap = base_xlim[0] - new_xlim[0]
new_xlim[0] = base_xlim[0]
if new_xlim[1] + overlap > base_xlim[1]:
new_xlim[1] = base_xlim[1]
else:
new_xlim[1] += overlap
if new_xlim[1] > base_xlim[1]:
overlap = new_xlim[1] - base_xlim[1]
new_xlim[1] = base_xlim[1]
if new_xlim[0] - overlap < base_xlim[0]:
new_xlim[0] = base_xlim[0]
else:
new_xlim[0] -= overlap
if new_ylim[1] < base_ylim[1]:
overlap = base_ylim[1] - new_ylim[1]
new_ylim[1] = base_ylim[1]
if new_ylim[0] + overlap > base_ylim[0]:
new_ylim[0] = base_ylim[0]
else:
new_ylim[0] += overlap
if new_ylim[0] > base_ylim[0]:
overlap = new_ylim[0] - base_ylim[0]
new_ylim[0] = base_ylim[0]
if new_ylim[1] - overlap < base_ylim[1]:
new_ylim[1] = base_ylim[1]
else:
new_ylim[1] -= overlap
return new_xlim, new_ylim
class FigureCanvas(FigureCanvasQTAgg):
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
self.bg_cache = None
def draw(self):
ax = self.figure.axes[0]
hid_annotation = False
if ax.annot.get_visible():
ax.annot.set_visible(False)
hid_annotation = True
hid_highlight = False
if ax.last_artist:
ax.last_artist.set_path_effects([PathEffects.Normal()])
hid_highlight = True
super().draw()
self.bg_cache = self.copy_from_bbox(self.figure.bbox)
if hid_highlight:
ax.last_artist.set_path_effects(
[PathEffects.withStroke(
linewidth=7, foreground="c", alpha=0.4
)]
)
ax.draw_artist(ax.last_artist)
if hid_annotation:
ax.annot.set_visible(True)
ax.draw_artist(ax.annot)
if hid_highlight:
self.update()
def position(t_, coeff, var=0.1):
x_ = np.random.normal(np.polyval(coeff[:, 0], t_), var)
y_ = np.random.normal(np.polyval(coeff[:, 1], t_), var)
return x_, y_
class Data:
def __init__(self, times):
self.length = np.random.randint(1, 20)
self.t = np.sort(
np.random.choice(times, size=self.length, replace=False)
)
self.vel = [np.random.uniform(-2, 2), np.random.uniform(-2, 2)]
self.accel = [np.random.uniform(-0.01, 0.01), np.random.uniform(-0.01,
0.01)]
x0, y0 = np.random.uniform(0, 1000, 2)
self.x, self.y = position(
self.t, np.array([self.accel, self.vel, [x0, y0]])
)
class Test(QDialog):
def __init__(self):
super().__init__()
self.fig, self.ax = plt.subplots()
self.canvas = FigureCanvas(self.fig)
self.artists = []
self.zoom_factor = 1.5
self.x_press = None
self.y_press = None
self.annot = Annotation(
"", xy=(0, 0), xytext=(-20, 20), textcoords="offset points",
bbox=dict(boxstyle="round", fc="w", alpha=0.7), color='black',
arrowprops=dict(arrowstyle="->"), zorder=6, visible=False,
annotation_clip=False, in_layout=False,
)
self.annot.set_clip_on(False)
setattr(self.ax, 'annot', self.annot)
self.ax.add_artist(self.annot)
self.last_artist = None
setattr(self.ax, 'last_artist', self.last_artist)
self.image = np.random.uniform(0, 100, 1000000).reshape((1000, 1000))
self.ax.imshow(self.image, cmap='gray', interpolation='nearest')
self.times = np.linspace(0, 20)
for i in range(1000):
data = Data(self.times)
points = np.array([data.x, data.y]).T.reshape(-1, 1, 2)
segments = np.concatenate([points[:-1], points[1:]], axis=1)
z = np.linspace(0, 1, data.length)
norm = plt.Normalize(z.min(), z.max())
lc = LineCollection(
segments, cmap='autumn', norm=norm, alpha=1,
linewidths=2, picker=8, capstyle='round',
joinstyle='round'
)
setattr(lc, 'data_id', i)
lc.set_array(z)
self.ax.add_artist(lc)
self.artists.append(lc)
self.default_xlim = self.ax.get_xlim()
self.default_ylim = self.ax.get_ylim()
self.canvas.draw()
self.cid_motion = self.fig.canvas.mpl_connect(
'motion_notify_event', self.motion_event
)
self.cid_button = self.fig.canvas.mpl_connect(
'button_press_event', self.pan_press
)
self.cid_zoom = self.fig.canvas.mpl_connect(
'scroll_event', self.zoom
)
layout = QVBoxLayout()
layout.addWidget(self.canvas)
self.setLayout(layout)
def zoom(self, event):
if event.inaxes == self.ax:
scale_factor = np.power(self.zoom_factor, -event.step)
xdata = event.xdata
ydata = event.ydata
cur_xlim = self.ax.get_xlim()
cur_ylim = self.ax.get_ylim()
x_left = xdata - cur_xlim[0]
x_right = cur_xlim[1] - xdata
y_top = ydata - cur_ylim[0]
y_bottom = cur_ylim[1] - ydata
new_xlim = [
xdata - x_left * scale_factor, xdata + x_right * scale_factor
]
new_ylim = [
ydata - y_top * scale_factor, ydata + y_bottom * scale_factor
]
# intercept new plot parameters if they are out of bounds
new_xlim, new_ylim = check_limits(
self.default_xlim, self.default_ylim, new_xlim, new_ylim
)
if cur_xlim != tuple(new_xlim) or cur_ylim != tuple(new_ylim):
self.ax.set_xlim(new_xlim)
self.ax.set_ylim(new_ylim)
self.canvas.draw_idle()
def motion_event(self, event):
if event.button == 1:
self.pan_move(event)
else:
self.hover(event)
def pan_press(self, event):
if event.inaxes == self.ax:
self.x_press = event.xdata
self.y_press = event.ydata
def pan_move(self, event):
if event.inaxes == self.ax:
xdata = event.xdata
ydata = event.ydata
cur_xlim = self.ax.get_xlim()
cur_ylim = self.ax.get_ylim()
dx = xdata - self.x_press
dy = ydata - self.y_press
new_xlim = [cur_xlim[0] - dx, cur_xlim[1] - dx]
new_ylim = [cur_ylim[0] - dy, cur_ylim[1] - dy]
# intercept new plot parameters that are out of bound
new_xlim, new_ylim = check_limits(
self.default_xlim, self.default_ylim, new_xlim, new_ylim
)
if cur_xlim != tuple(new_xlim) or cur_ylim != tuple(new_ylim):
self.ax.set_xlim(new_xlim)
self.ax.set_ylim(new_ylim)
self.canvas.draw_idle()
def update_annot(self, event, artist):
self.ax.annot.xy = (event.xdata, event.ydata)
text = f'Data #{artist.data_id}'
self.ax.annot.set_text(text)
self.ax.annot.set_visible(True)
self.ax.draw_artist(self.ax.annot)
def hover(self, event):
vis = self.ax.annot.get_visible()
if event.inaxes == self.ax:
ind = 0
cont = None
while (
ind in range(len(self.artists))
and not cont
):
artist = self.artists[ind]
cont, _ = artist.contains(event)
if cont and artist is not self.ax.last_artist:
if self.ax.last_artist is not None:
self.canvas.restore_region(self.canvas.bg_cache)
self.ax.last_artist.set_path_effects(
[PathEffects.Normal()]
)
self.ax.last_artist = None
artist.set_path_effects(
[PathEffects.withStroke(
linewidth=7, foreground="c", alpha=0.4
)]
)
self.ax.last_artist = artist
self.ax.draw_artist(self.ax.last_artist)
self.update_annot(event, self.ax.last_artist)
ind += 1
if vis and not cont and self.ax.last_artist:
self.canvas.restore_region(self.canvas.bg_cache)
self.ax.last_artist.set_path_effects([PathEffects.Normal()])
self.ax.last_artist = None
self.ax.annot.set_visible(False)
elif vis:
self.canvas.restore_region(self.canvas.bg_cache)
self.ax.last_artist.set_path_effects([PathEffects.Normal()])
self.ax.last_artist = None
self.ax.annot.set_visible(False)
self.canvas.update()
self.canvas.flush_events()
if __name__ == '__main__':
app = QApplication(sys.argv)
test = Test()
test.show()
sys.exit(app.exec_())
plot
dengan semua poin, masalah tidak akan terjadi.