
    ^MhO                         d dl mZmZmZ ddlmZmZ 	 d dlZ ej         ej	        d          dee          Z
n# e$ r dZdZ
Y nw xY we
fdZd	 Zd
 ZddZdS )    )array
frombufferload   )registryregistry_urlsNz
scipy-datazhttps://github.com/scipy/)pathbase_urlr   urlsc                 N    |t          d          |                    |           S )NzsMissing optional dependency 'pooch' required for scipy.datasets module. Please use pip or conda to install 'pooch'.)ImportErrorfetch)dataset_namedata_fetchers     X/var/www/html/test/jupyter/venv/lib/python3.11/site-packages/scipy/datasets/_fetchers.py
fetch_datar      s5     6 7 7 	7 l+++    c                      ddl } t          d          }t          |d          5 }t          |                     |                    }ddd           n# 1 swxY w Y   |S )aX  
    Get an 8-bit grayscale bit-depth, 512 x 512 derived image for easy
    use in demos.

    The image is derived from
    https://pixnio.com/people/accent-to-the-top

    Parameters
    ----------
    None

    Returns
    -------
    ascent : ndarray
       convenient image to use for testing and demonstration

    Examples
    --------
    >>> import scipy.datasets
    >>> ascent = scipy.datasets.ascent()
    >>> ascent.shape
    (512, 512)
    >>> ascent.max()
    np.uint8(255)

    >>> import matplotlib.pyplot as plt
    >>> plt.gray()
    >>> plt.imshow(ascent)
    >>> plt.show()

    r   Nz
ascent.datrb)pickler   openr   r   )r   fnamefascents       r   r   r   "   s    @ MMM
 |$$E	eT		 'av{{1~~&&' ' ' ' ' ' ' ' ' ' ' ' ' ' 'Ms   #AAAc                      t          d          } t          |           5 }|d                             t                    }ddd           n# 1 swxY w Y   |dz
  dz  }|S )a  
    Load an electrocardiogram as an example for a 1-D signal.

    The returned signal is a 5 minute long electrocardiogram (ECG), a medical
    recording of the heart's electrical activity, sampled at 360 Hz.

    Returns
    -------
    ecg : ndarray
        The electrocardiogram in millivolt (mV) sampled at 360 Hz.

    Notes
    -----
    The provided signal is an excerpt (19:35 to 24:35) from the `record 208`_
    (lead MLII) provided by the MIT-BIH Arrhythmia Database [1]_ on
    PhysioNet [2]_. The excerpt includes noise induced artifacts, typical
    heartbeats as well as pathological changes.

    .. _record 208: https://physionet.org/physiobank/database/html/mitdbdir/records.htm#208

    .. versionadded:: 1.1.0

    References
    ----------
    .. [1] Moody GB, Mark RG. The impact of the MIT-BIH Arrhythmia Database.
           IEEE Eng in Med and Biol 20(3):45-50 (May-June 2001).
           (PMID: 11446209); :doi:`10.13026/C2F305`
    .. [2] Goldberger AL, Amaral LAN, Glass L, Hausdorff JM, Ivanov PCh,
           Mark RG, Mietus JE, Moody GB, Peng C-K, Stanley HE. PhysioBank,
           PhysioToolkit, and PhysioNet: Components of a New Research Resource
           for Complex Physiologic Signals. Circulation 101(23):e215-e220;
           :doi:`10.1161/01.CIR.101.23.e215`

    Examples
    --------
    >>> from scipy.datasets import electrocardiogram
    >>> ecg = electrocardiogram()
    >>> ecg
    array([-0.245, -0.215, -0.185, ..., -0.405, -0.395, -0.385], shape=(108000,))
    >>> ecg.shape, ecg.mean(), ecg.std()
    ((108000,), -0.16510875, 0.5992473991177294)

    As stated the signal features several areas with a different morphology.
    E.g., the first few seconds show the electrical activity of a heart in
    normal sinus rhythm as seen below.

    >>> import numpy as np
    >>> import matplotlib.pyplot as plt
    >>> fs = 360
    >>> time = np.arange(ecg.size) / fs
    >>> plt.plot(time, ecg)
    >>> plt.xlabel("time in s")
    >>> plt.ylabel("ECG in mV")
    >>> plt.xlim(9, 10.2)
    >>> plt.ylim(-1, 1.5)
    >>> plt.show()

    After second 16, however, the first premature ventricular contractions,
    also called extrasystoles, appear. These have a different morphology
    compared to typical heartbeats. The difference can easily be observed
    in the following plot.

    >>> plt.plot(time, ecg)
    >>> plt.xlabel("time in s")
    >>> plt.ylabel("ECG in mV")
    >>> plt.xlim(46.5, 50)
    >>> plt.ylim(-2, 1.5)
    >>> plt.show()

    At several points large artifacts disturb the recording, e.g.:

    >>> plt.plot(time, ecg)
    >>> plt.xlabel("time in s")
    >>> plt.ylabel("ECG in mV")
    >>> plt.xlim(207, 215)
    >>> plt.ylim(-2, 3.5)
    >>> plt.show()

    Finally, examining the power spectrum reveals that most of the biosignal is
    made up of lower frequencies. At 60 Hz the noise induced by the mains
    electricity can be clearly observed.

    >>> from scipy.signal import welch
    >>> f, Pxx = welch(ecg, fs=fs, nperseg=2048, scaling="spectrum")
    >>> plt.semilogy(f, Pxx)
    >>> plt.xlabel("Frequency in Hz")
    >>> plt.ylabel("Power spectrum of the ECG in mV**2")
    >>> plt.xlim(f[[0, -1]])
    >>> plt.show()
    zecg.datecgN   g      i@)r   r   astypeint)r   filer   s      r   electrocardiogramr!   N   s    v y!!E	e &5k  %%& & & & & & & & & & & & & & & :
CJs   !AAAFc                    ddl }t          d          }t          |d          5 }|                                }ddd           n# 1 swxY w Y   |                    |          }t          |d          }d|_        | du rKd	|dddddf         z  d
|dddddf         z  z   d|dddddf         z  z                       d          }|S )a  
    Get a 1024 x 768, color image of a raccoon face.

    The image is derived from
    https://pixnio.com/fauna-animals/raccoons/raccoon-procyon-lotor

    Parameters
    ----------
    gray : bool, optional
        If True return 8-bit grey-scale image, otherwise return a color image

    Returns
    -------
    face : ndarray
        image of a raccoon face

    Examples
    --------
    >>> import scipy.datasets
    >>> face = scipy.datasets.face()
    >>> face.shape
    (768, 1024, 3)
    >>> face.max()
    np.uint8(255)

    >>> import matplotlib.pyplot as plt
    >>> plt.gray()
    >>> plt.imshow(face)
    >>> plt.show()

    r   Nzface.datr   uint8)dtype)i   r      TgzG?gQ?r   gQ?   )bz2r   r   read
decompressr   shaper   )grayr'   r   r   rawdata	face_datafaces          r   r.   r.      s'   @ JJJz""E	eT		 a&&((              w''Iiw///DDJt||tAAAqqq!G}$td111aaa7m';;tAAAqqq!G}$%&,fWoo 	Ks   AA	A	)F)numpyr   r   r   	_registryr   r   poochcreateos_cacher   r   r   r   r!   r.    r   r   <module>r5      s   ) ) ) ) ) ) ) ) ) ) . . . . . . . .LLL
  5< U^L))
 -  LL	    ELLL& +7 , , , ,) ) )X` ` `F* * * * * *s   ; 	AA