| .. redirect-from:: /users/event_handling |
|
|
| .. _event-handling: |
| .. _event_handling: |
|
|
| ************************** |
| Event handling and picking |
| ************************** |
|
|
| Matplotlib works with a number of user interface toolkits (wxpython, |
| tkinter, qt, gtk, and macosx) and in order to support features like |
| interactive panning and zooming of figures, it is helpful to the |
| developers to have an API for interacting with the figure via key |
| presses and mouse movements that is "GUI neutral" so we don |
| repeat a lot of code across the different user interfaces. Although |
| the event handling API is GUI neutral, it is based on the GTK model, |
| which was the first user interface Matplotlib supported. The events |
| that are triggered are also a bit richer vis-a-vis Matplotlib than |
| standard GUI events, including information like which |
| `~.axes.Axes` the event occurred in. The events also |
| understand the Matplotlib coordinate system, and report event |
| locations in both pixel and data coordinates. |
|
|
| .. _event-connections: |
|
|
| Event connections |
| ================= |
|
|
| To receive events, you need to write a callback function and then |
| connect your function to the event manager, which is part of the |
| `~.FigureCanvasBase`. Here is a simple |
| example that prints the location of the mouse click and which button |
| was pressed:: |
|
|
| fig, ax = plt.subplots() |
| ax.plot(np.random.rand(10)) |
|
|
| def onclick(event): |
| print( |
| ( |
| event.x, event.y, event.xdata, event.ydata)) |
|
|
| cid = fig.canvas.mpl_connect( |
|
|
| The `.FigureCanvasBase.mpl_connect` method returns a connection id (an |
| integer), which can be used to disconnect the callback via :: |
|
|
| fig.canvas.mpl_disconnect(cid) |
|
|
| .. note:: |
| The canvas retains only weak references to instance methods used as |
| callbacks. Therefore, you need to retain a reference to instances owning |
| such methods. Otherwise the instance will be garbage-collected and the |
| callback will vanish. |
|
|
| This does not affect free functions used as callbacks. |
|
|
| Here are the events that you can connect to, the class instances that |
| are sent back to you when the event occurs, and the event descriptions: |
|
|
| ====================== ================ ====================================== |
| Event name Class Description |
| ====================== ================ ====================================== |
| |
| |
| |
| |
| widget not updated yet) |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| ====================== ================ ====================================== |
|
|
| .. note:: |
| When connecting to |
| you may encounter inconsistencies between the different user interface |
| toolkits that Matplotlib works with. This is due to inconsistencies/limitations |
| of the user interface toolkit. The following table shows some basic examples of |
| what you may expect to receive as key(s) (using a QWERTY keyboard layout) |
| from the different user interface toolkits, where a comma separates different keys: |
|
|
| .. container:: wide-table |
|
|
| .. list-table:: |
| :header-rows: 1 |
| :stub-columns: 1 |
|
|
| * - Key(s) Pressed |
| - Tkinter |
| - Qt |
| - macosx |
| - WebAgg |
| - GTK |
| - WxPython |
| * - :kbd:`Shift+2` |
| - shift, @ |
| - shift, @ |
| - shift, @ |
| - shift, @ |
| - shift, @ |
| - shift, shift+2 |
| * - :kbd:`Shift+F1` |
| - shift, shift+f1 |
| - shift, shift+f1 |
| - shift, shift+f1 |
| - shift, shift+f1 |
| - shift, shift+f1 |
| - shift, shift+f1 |
| * - :kbd:`Shift` |
| - shift |
| - shift |
| - shift |
| - shift |
| - shift |
| - shift |
| * - :kbd:`Control` |
| - control |
| - control |
| - control |
| - control |
| - control |
| - control |
| * - :kbd:`Alt` |
| - alt |
| - alt |
| - alt |
| - alt |
| - alt |
| - alt |
| * - :kbd:`AltGr` |
| - iso_level3_shift |
| - *nothing* |
| - |
| - alt |
| - iso_level3_shift |
| - *nothing* |
| * - :kbd:`CapsLock` |
| - caps_lock |
| - caps_lock |
| - caps_lock |
| - caps_lock |
| - caps_lock |
| - caps_lock |
| * - :kbd:`CapsLock+a` |
| - caps_lock, A |
| - caps_lock, a |
| - caps_lock, a |
| - caps_lock, A |
| - caps_lock, A |
| - caps_lock, a |
| * - :kbd:`a` |
| - a |
| - a |
| - a |
| - a |
| - a |
| - a |
| * - :kbd:`Shift+a` |
| - shift, A |
| - shift, A |
| - shift, A |
| - shift, A |
| - shift, A |
| - shift, A |
| * - :kbd:`CapsLock+Shift+a` |
| - caps_lock, shift, a |
| - caps_lock, shift, A |
| - caps_lock, shift, A |
| - caps_lock, shift, a |
| - caps_lock, shift, a |
| - caps_lock, shift, A |
| * - :kbd:`Ctrl+Shift+Alt` |
| - control, ctrl+shift, ctrl+meta |
| - control, ctrl+shift, ctrl+meta |
| - control, ctrl+shift, ctrl+alt+shift |
| - control, ctrl+shift, ctrl+meta |
| - control, ctrl+shift, ctrl+meta |
| - control, ctrl+shift, ctrl+alt |
| * - :kbd:`Ctrl+Shift+a` |
| - control, ctrl+shift, ctrl+a |
| - control, ctrl+shift, ctrl+A |
| - control, ctrl+shift, ctrl+A |
| - control, ctrl+shift, ctrl+A |
| - control, ctrl+shift, ctrl+A |
| - control, ctrl+shift, ctrl+A |
| * - :kbd:`F1` |
| - f1 |
| - f1 |
| - f1 |
| - f1 |
| - f1 |
| - f1 |
| * - :kbd:`Ctrl+F1` |
| - control, ctrl+f1 |
| - control, ctrl+f1 |
| - control, *nothing* |
| - control, ctrl+f1 |
| - control, ctrl+f1 |
| - control, ctrl+f1 |
|
|
| Matplotlib attaches some keypress callbacks by default for interactivity; they |
| are documented in the :ref:`key-event-handling` section. |
|
|
| .. _event-attributes: |
|
|
| Event attributes |
| ================ |
|
|
| All Matplotlib events inherit from the base class |
| `matplotlib.backend_bases.Event`, which stores the attributes: |
|
|
| ``name`` |
| the event name |
| ``canvas`` |
| the FigureCanvas instance generating the event |
| ``guiEvent`` |
| the GUI event that triggered the Matplotlib event |
|
|
| The most common events that are the bread and butter of event handling |
| are key press/release events and mouse press/release and movement |
| events. The `.KeyEvent` and `.MouseEvent` classes that handle |
| these events are both derived from the LocationEvent, which has the |
| following attributes |
|
|
| ``x``, ``y`` |
| mouse x and y position in pixels from left and bottom of canvas |
| ``inaxes`` |
| the `~.axes.Axes` instance over which the mouse is, if any; else None |
| ``xdata``, ``ydata`` |
| mouse x and y position in data coordinates, if the mouse is over an |
| axes |
|
|
| Let |
| is created every time a mouse is pressed:: |
|
|
| from matplotlib import pyplot as plt |
|
|
| class LineBuilder: |
| def __init__(self, line): |
| self.line = line |
| self.xs = list(line.get_xdata()) |
| self.ys = list(line.get_ydata()) |
| self.cid = line.figure.canvas.mpl_connect( |
|
|
| def __call__(self, event): |
| print( |
| if event.inaxes!=self.line.axes: return |
| self.xs.append(event.xdata) |
| self.ys.append(event.ydata) |
| self.line.set_data(self.xs, self.ys) |
| self.line.figure.canvas.draw() |
|
|
| fig, ax = plt.subplots() |
| ax.set_title( |
| line, = ax.plot([0], [0]) # empty line |
| linebuilder = LineBuilder(line) |
|
|
| plt.show() |
|
|
| The `.MouseEvent` that we just used is a `.LocationEvent`, so we have access to |
| the data and pixel coordinates via ``(event.x, event.y)`` and ``(event.xdata, |
| event.ydata)``. In addition to the ``LocationEvent`` attributes, it also has: |
|
|
| ``button`` |
| the button pressed: None, `.MouseButton`, |
|
|
| ``key`` |
| the key pressed: None, any character, |
|
|
| Draggable rectangle exercise |
| ---------------------------- |
|
|
| Write draggable rectangle class that is initialized with a |
| `.Rectangle` instance but will move its ``xy`` |
| location when dragged. Hint: you will need to store the original |
| ``xy`` location of the rectangle which is stored as rect.xy and |
| connect to the press, motion and release mouse events. When the mouse |
| is pressed, check to see if the click occurs over your rectangle (see |
| `.Rectangle.contains`) and if it does, store |
| the rectangle xy and the location of the mouse click in data coords. |
| In the motion event callback, compute the deltax and deltay of the |
| mouse movement, and add those deltas to the origin of the rectangle |
| you stored. The redraw the figure. On the button release event, just |
| reset all the button press data you stored as None. |
|
|
| Here is the solution:: |
|
|
| import numpy as np |
| import matplotlib.pyplot as plt |
|
|
| class DraggableRectangle: |
| def __init__(self, rect): |
| self.rect = rect |
| self.press = None |
|
|
| def connect(self): |
| """Connect to all the events we need.""" |
| self.cidpress = self.rect.figure.canvas.mpl_connect( |
| |
| self.cidrelease = self.rect.figure.canvas.mpl_connect( |
| |
| self.cidmotion = self.rect.figure.canvas.mpl_connect( |
| |
|
|
| def on_press(self, event): |
| """Check whether mouse is over us; if so, store some data.""" |
| if event.inaxes != self.rect.axes: |
| return |
| contains, attrd = self.rect.contains(event) |
| if not contains: |
| return |
| print( |
| self.press = self.rect.xy, (event.xdata, event.ydata) |
|
|
| def on_motion(self, event): |
| """Move the rectangle if the mouse is over us.""" |
| if self.press is None or event.inaxes != self.rect.axes: |
| return |
| (x0, y0), (xpress, ypress) = self.press |
| dx = event.xdata - xpress |
| dy = event.ydata - ypress |
| # print(f |
| # f |
| self.rect.set_x(x0+dx) |
| self.rect.set_y(y0+dy) |
|
|
| self.rect.figure.canvas.draw() |
|
|
| def on_release(self, event): |
| """Clear button press information.""" |
| self.press = None |
| self.rect.figure.canvas.draw() |
|
|
| def disconnect(self): |
| """Disconnect all callbacks.""" |
| self.rect.figure.canvas.mpl_disconnect(self.cidpress) |
| self.rect.figure.canvas.mpl_disconnect(self.cidrelease) |
| self.rect.figure.canvas.mpl_disconnect(self.cidmotion) |
|
|
| fig, ax = plt.subplots() |
| rects = ax.bar(range(10), 20*np.random.rand(10)) |
| drs = [] |
| for rect in rects: |
| dr = DraggableRectangle(rect) |
| dr.connect() |
| drs.append(dr) |
|
|
| plt.show() |
|
|
|
|
| **Extra credit**: Use blitting to make the animated drawing faster and |
| smoother. |
|
|
| Extra credit solution:: |
|
|
| # Draggable rectangle with blitting. |
| import numpy as np |
| import matplotlib.pyplot as plt |
|
|
| class DraggableRectangle: |
| lock = None # only one can be animated at a time |
|
|
| def __init__(self, rect): |
| self.rect = rect |
| self.press = None |
| self.background = None |
|
|
| def connect(self): |
| """Connect to all the events we need.""" |
| self.cidpress = self.rect.figure.canvas.mpl_connect( |
| |
| self.cidrelease = self.rect.figure.canvas.mpl_connect( |
| |
| self.cidmotion = self.rect.figure.canvas.mpl_connect( |
| |
|
|
| def on_press(self, event): |
| """Check whether mouse is over us; if so, store some data.""" |
| if (event.inaxes != self.rect.axes |
| or DraggableRectangle.lock is not None): |
| return |
| contains, attrd = self.rect.contains(event) |
| if not contains: |
| return |
| print( |
| self.press = self.rect.xy, (event.xdata, event.ydata) |
| DraggableRectangle.lock = self |
|
|
| # draw everything but the selected rectangle and store the pixel buffer |
| canvas = self.rect.figure.canvas |
| axes = self.rect.axes |
| self.rect.set_animated(True) |
| canvas.draw() |
| self.background = canvas.copy_from_bbox(self.rect.axes.bbox) |
|
|
| # now redraw just the rectangle |
| axes.draw_artist(self.rect) |
|
|
| # and blit just the redrawn area |
| canvas.blit(axes.bbox) |
|
|
| def on_motion(self, event): |
| """Move the rectangle if the mouse is over us.""" |
| if (event.inaxes != self.rect.axes |
| or DraggableRectangle.lock is not self): |
| return |
| (x0, y0), (xpress, ypress) = self.press |
| dx = event.xdata - xpress |
| dy = event.ydata - ypress |
| self.rect.set_x(x0+dx) |
| self.rect.set_y(y0+dy) |
|
|
| canvas = self.rect.figure.canvas |
| axes = self.rect.axes |
| # restore the background region |
| canvas.restore_region(self.background) |
|
|
| # redraw just the current rectangle |
| axes.draw_artist(self.rect) |
|
|
| # blit just the redrawn area |
| canvas.blit(axes.bbox) |
|
|
| def on_release(self, event): |
| """Clear button press information.""" |
| if DraggableRectangle.lock is not self: |
| return |
|
|
| self.press = None |
| DraggableRectangle.lock = None |
|
|
| # turn off the rect animation property and reset the background |
| self.rect.set_animated(False) |
| self.background = None |
|
|
| # redraw the full figure |
| self.rect.figure.canvas.draw() |
|
|
| def disconnect(self): |
| """Disconnect all callbacks.""" |
| self.rect.figure.canvas.mpl_disconnect(self.cidpress) |
| self.rect.figure.canvas.mpl_disconnect(self.cidrelease) |
| self.rect.figure.canvas.mpl_disconnect(self.cidmotion) |
|
|
| fig, ax = plt.subplots() |
| rects = ax.bar(range(10), 20*np.random.rand(10)) |
| drs = [] |
| for rect in rects: |
| dr = DraggableRectangle(rect) |
| dr.connect() |
| drs.append(dr) |
|
|
| plt.show() |
|
|
| .. _enter-leave-events: |
|
|
| Mouse enter and leave |
| ====================== |
|
|
| If you want to be notified when the mouse enters or leaves a figure or |
| axes, you can connect to the figure/axes enter/leave events. Here is |
| a simple example that changes the colors of the axes and figure |
| background that the mouse is over:: |
|
|
| """ |
| Illustrate the figure and axes enter and leave events by changing the |
| frame colors on enter and leave |
| """ |
| import matplotlib.pyplot as plt |
|
|
| def enter_axes(event): |
| print( |
| event.inaxes.patch.set_facecolor( |
| event.canvas.draw() |
|
|
| def leave_axes(event): |
| print( |
| event.inaxes.patch.set_facecolor( |
| event.canvas.draw() |
|
|
| def enter_figure(event): |
| print( |
| event.canvas.figure.patch.set_facecolor( |
| event.canvas.draw() |
|
|
| def leave_figure(event): |
| print( |
| event.canvas.figure.patch.set_facecolor( |
| event.canvas.draw() |
|
|
| fig1, axs = plt.subplots(2) |
| fig1.suptitle( |
|
|
| fig1.canvas.mpl_connect( |
| fig1.canvas.mpl_connect( |
| fig1.canvas.mpl_connect( |
| fig1.canvas.mpl_connect( |
|
|
| fig2, axs = plt.subplots(2) |
| fig2.suptitle( |
|
|
| fig2.canvas.mpl_connect( |
| fig2.canvas.mpl_connect( |
| fig2.canvas.mpl_connect( |
| fig2.canvas.mpl_connect( |
|
|
| plt.show() |
|
|
| .. _object-picking: |
|
|
| Object picking |
| ============== |
|
|
| You can enable picking by setting the ``picker`` property of an `.Artist` (such |
| as `.Line2D`, `.Text`, `.Patch`, `.Polygon`, `.AxesImage`, etc.) |
|
|
| The ``picker`` property can be set using various types: |
|
|
| ``None`` |
| Picking is disabled for this artist (default). |
| ``boolean`` |
| If True, then picking will be enabled and the artist will fire a |
| pick event if the mouse event is over the artist. |
| ``callable`` |
| If picker is a callable, it is a user supplied function which |
| determines whether the artist is hit by the mouse event. The |
| signature is ``hit, props = picker(artist, mouseevent)`` to |
| determine the hit test. If the mouse event is over the artist, |
| return ``hit = True``; ``props`` is a dictionary of properties that |
| become additional attributes on the `.PickEvent`. |
|
|
| The artist |
| value in points (there are 72 points per inch) that determines how far the |
| mouse can be and still trigger a mouse event. |
|
|
| After you have enabled an artist for picking by setting the ``picker`` |
| property, you need to connect a handler to the figure canvas pick_event to get |
| pick callbacks on mouse press events. The handler typically looks like :: |
|
|
| def pick_handler(event): |
| mouseevent = event.mouseevent |
| artist = event.artist |
| # now do something with this... |
|
|
| The `.PickEvent` passed to your callback always has the following attributes: |
|
|
| ``mouseevent`` |
| The `.MouseEvent` that generate the pick event. See event-attributes_ |
| for a list of useful attributes on the mouse event. |
| ``artist`` |
| The `.Artist` that generated the pick event. |
|
|
| Additionally, certain artists like `.Line2D` and `.PatchCollection` may attach |
| additional metadata, like the indices of the data that meet the |
| picker criteria (e.g., all the points in the line that are within the |
| specified ``pickradius`` tolerance). |
|
|
| Simple picking example |
| ---------------------- |
|
|
| In the example below, we enable picking on the line and set a pick radius |
| tolerance in points. The ``onpick`` |
| callback function will be called when the pick event it within the |
| tolerance distance from the line, and has the indices of the data |
| vertices that are within the pick distance tolerance. Our ``onpick`` |
| callback function simply prints the data that are under the pick |
| location. Different Matplotlib Artists can attach different data to |
| the PickEvent. For example, ``Line2D`` attaches the ind property, |
| which are the indices into the line data under the pick point. See |
| `.Line2D.pick` for details on the ``PickEvent`` properties of the line. :: |
|
|
| import numpy as np |
| import matplotlib.pyplot as plt |
|
|
| fig, ax = plt.subplots() |
| ax.set_title( |
|
|
| line, = ax.plot(np.random.rand(100), |
| picker=True, pickradius=5) # 5 points tolerance |
|
|
| def onpick(event): |
| thisline = event.artist |
| xdata = thisline.get_xdata() |
| ydata = thisline.get_ydata() |
| ind = event.ind |
| points = tuple(zip(xdata[ind], ydata[ind])) |
| print( |
|
|
| fig.canvas.mpl_connect( |
|
|
| plt.show() |
|
|
| Picking exercise |
| ---------------- |
|
|
| Create a data set of 100 arrays of 1000 Gaussian random numbers and |
| compute the sample mean and standard deviation of each of them (hint: |
| NumPy arrays have a mean and std method) and make a xy marker plot of |
| the 100 means vs. the 100 standard deviations. Connect the line |
| created by the plot command to the pick event, and plot the original |
| time series of the data that generated the clicked on points. If more |
| than one point is within the tolerance of the clicked on point, you |
| can use multiple subplots to plot the multiple time series. |
|
|
| Exercise solution:: |
|
|
| """ |
| Compute the mean and stddev of 100 data sets and plot mean vs. stddev. |
| When you click on one of the (mean, stddev) points, plot the raw dataset |
| that generated that point. |
| """ |
|
|
| import numpy as np |
| import matplotlib.pyplot as plt |
|
|
| X = np.random.rand(100, 1000) |
| xs = np.mean(X, axis=1) |
| ys = np.std(X, axis=1) |
|
|
| fig, ax = plt.subplots() |
| ax.set_title( |
| line, = ax.plot(xs, ys, |
|
|
|
|
| def onpick(event): |
| if event.artist != line: |
| return |
| n = len(event.ind) |
| if not n: |
| return |
| fig, axs = plt.subplots(n, squeeze=False) |
| for dataind, ax in zip(event.ind, axs.flat): |
| ax.plot(X[dataind]) |
| ax.text(0.05, 0.9, |
| f"$\\mu$={xs[dataind]:1.3f}\n$\\sigma$={ys[dataind]:1.3f}", |
| transform=ax.transAxes, verticalalignment= |
| ax.set_ylim(-0.5, 1.5) |
| fig.show() |
| return True |
|
|
|
|
| fig.canvas.mpl_connect( |
| plt.show() |
|
|