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python - 如何定向 matplotlib ax 对象以沿时间序列线(affine_transform、mtransform)连续绘制?

转载 作者:太空狗 更新时间:2023-10-29 18:08:54 25 4
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我正在尝试为时间序列中的数据创建热图(最终是散点图)。我想以一种表明它们处于线性时间轴上的方式来定位它们。

如何使用 matplotlib Affine2Dscipy.ndimage.affine_transform 来实现这一目标?理想情况下,我希望能够调整以下角度:(1) 时间线的角度(即示例 1 中 T = 1、T = 2 和 T = 3 的位置);和 (2) 热图与 (1) 中的线相交的角度

我找到的示例依赖于 im = ax.imshow,而我的示例并非如此。

from collections import OrderedDict
import pandas as pd
import seaborn as sns
import matplotlib.pyplot as plt

# Get iris data
X_iris = pd.DataFrame({'sepal_length': {'iris_0': 5.1, 'iris_1': 4.9, 'iris_2': 4.7, 'iris_3': 4.6, 'iris_4': 5.0, 'iris_5': 5.4, 'iris_6': 4.6, 'iris_7': 5.0, 'iris_8': 4.4, 'iris_9': 4.9, 'iris_10': 5.4, 'iris_11': 4.8, 'iris_12': 4.8, 'iris_13': 4.3, 'iris_14': 5.8, 'iris_15': 5.7, 'iris_16': 5.4, 'iris_17': 5.1, 'iris_18': 5.7, 'iris_19': 5.1, 'iris_20': 5.4, 'iris_21': 5.1, 'iris_22': 4.6, 'iris_23': 5.1, 'iris_24': 4.8, 'iris_25': 5.0, 'iris_26': 5.0, 'iris_27': 5.2, 'iris_28': 5.2, 'iris_29': 4.7, 'iris_30': 4.8, 'iris_31': 5.4, 'iris_32': 5.2, 'iris_33': 5.5, 'iris_34': 4.9, 'iris_35': 5.0, 'iris_36': 5.5, 'iris_37': 4.9, 'iris_38': 4.4, 'iris_39': 5.1, 'iris_40': 5.0, 'iris_41': 4.5, 'iris_42': 4.4, 'iris_43': 5.0, 'iris_44': 5.1, 'iris_45': 4.8, 'iris_46': 5.1, 'iris_47': 4.6, 'iris_48': 5.3, 'iris_49': 5.0, 'iris_50': 7.0, 'iris_51': 6.4, 'iris_52': 6.9, 'iris_53': 5.5, 'iris_54': 6.5, 'iris_55': 5.7, 'iris_56': 6.3, 'iris_57': 4.9, 'iris_58': 6.6, 'iris_59': 5.2, 'iris_60': 5.0, 'iris_61': 5.9, 'iris_62': 6.0, 'iris_63': 6.1, 'iris_64': 5.6, 'iris_65': 6.7, 'iris_66': 5.6, 'iris_67': 5.8, 'iris_68': 6.2, 'iris_69': 5.6, 'iris_70': 5.9, 'iris_71': 6.1, 'iris_72': 6.3, 'iris_73': 6.1, 'iris_74': 6.4, 'iris_75': 6.6, 'iris_76': 6.8, 'iris_77': 6.7, 'iris_78': 6.0, 'iris_79': 5.7, 'iris_80': 5.5, 'iris_81': 5.5, 'iris_82': 5.8, 'iris_83': 6.0, 'iris_84': 5.4, 'iris_85': 6.0, 'iris_86': 6.7, 'iris_87': 6.3, 'iris_88': 5.6, 'iris_89': 5.5, 'iris_90': 5.5, 'iris_91': 6.1, 'iris_92': 5.8, 'iris_93': 5.0, 'iris_94': 5.6, 'iris_95': 5.7, 'iris_96': 5.7, 'iris_97': 6.2, 'iris_98': 5.1, 'iris_99': 5.7, 'iris_100': 6.3, 'iris_101': 5.8, 'iris_102': 7.1, 'iris_103': 6.3, 'iris_104': 6.5, 'iris_105': 7.6, 'iris_106': 4.9, 'iris_107': 7.3, 'iris_108': 6.7, 'iris_109': 7.2, 'iris_110': 6.5, 'iris_111': 6.4, 'iris_112': 6.8, 'iris_113': 5.7, 'iris_114': 5.8, 'iris_115': 6.4, 'iris_116': 6.5, 'iris_117': 7.7, 'iris_118': 7.7, 'iris_119': 6.0, 'iris_120': 6.9, 'iris_121': 5.6, 'iris_122': 7.7, 'iris_123': 6.3, 'iris_124': 6.7, 'iris_125': 7.2, 'iris_126': 6.2, 'iris_127': 6.1, 'iris_128': 6.4, 'iris_129': 7.2, 'iris_130': 7.4, 'iris_131': 7.9, 'iris_132': 6.4, 'iris_133': 6.3, 'iris_134': 6.1, 'iris_135': 7.7, 'iris_136': 6.3, 'iris_137': 6.4, 'iris_138': 6.0, 'iris_139': 6.9, 'iris_140': 6.7, 'iris_141': 6.9, 'iris_142': 5.8, 'iris_143': 6.8, 'iris_144': 6.7, 'iris_145': 6.7, 'iris_146': 6.3, 'iris_147': 6.5, 'iris_148': 6.2, 'iris_149': 5.9}, 'sepal_width': {'iris_0': 3.5, 'iris_1': 3.0, 'iris_2': 3.2, 'iris_3': 3.1, 'iris_4': 3.6, 'iris_5': 3.9, 'iris_6': 3.4, 'iris_7': 3.4, 'iris_8': 2.9, 'iris_9': 3.1, 'iris_10': 3.7, 'iris_11': 3.4, 'iris_12': 3.0, 'iris_13': 3.0, 'iris_14': 4.0, 'iris_15': 4.4, 'iris_16': 3.9, 'iris_17': 3.5, 'iris_18': 3.8, 'iris_19': 3.8, 'iris_20': 3.4, 'iris_21': 3.7, 'iris_22': 3.6, 'iris_23': 3.3, 'iris_24': 3.4, 'iris_25': 3.0, 'iris_26': 3.4, 'iris_27': 3.5, 'iris_28': 3.4, 'iris_29': 3.2, 'iris_30': 3.1, 'iris_31': 3.4, 'iris_32': 4.1, 'iris_33': 4.2, 'iris_34': 3.1, 'iris_35': 3.2, 'iris_36': 3.5, 'iris_37': 3.6, 'iris_38': 3.0, 'iris_39': 3.4, 'iris_40': 3.5, 'iris_41': 2.3, 'iris_42': 3.2, 'iris_43': 3.5, 'iris_44': 3.8, 'iris_45': 3.0, 'iris_46': 3.8, 'iris_47': 3.2, 'iris_48': 3.7, 'iris_49': 3.3, 'iris_50': 3.2, 'iris_51': 3.2, 'iris_52': 3.1, 'iris_53': 2.3, 'iris_54': 2.8, 'iris_55': 2.8, 'iris_56': 3.3, 'iris_57': 2.4, 'iris_58': 2.9, 'iris_59': 2.7, 'iris_60': 2.0, 'iris_61': 3.0, 'iris_62': 2.2, 'iris_63': 2.9, 'iris_64': 2.9, 'iris_65': 3.1, 'iris_66': 3.0, 'iris_67': 2.7, 'iris_68': 2.2, 'iris_69': 2.5, 'iris_70': 3.2, 'iris_71': 2.8, 'iris_72': 2.5, 'iris_73': 2.8, 'iris_74': 2.9, 'iris_75': 3.0, 'iris_76': 2.8, 'iris_77': 3.0, 'iris_78': 2.9, 'iris_79': 2.6, 'iris_80': 2.4, 'iris_81': 2.4, 'iris_82': 2.7, 'iris_83': 2.7, 'iris_84': 3.0, 'iris_85': 3.4, 'iris_86': 3.1, 'iris_87': 2.3, 'iris_88': 3.0, 'iris_89': 2.5, 'iris_90': 2.6, 'iris_91': 3.0, 'iris_92': 2.6, 'iris_93': 2.3, 'iris_94': 2.7, 'iris_95': 3.0, 'iris_96': 2.9, 'iris_97': 2.9, 'iris_98': 2.5, 'iris_99': 2.8, 'iris_100': 3.3, 'iris_101': 2.7, 'iris_102': 3.0, 'iris_103': 2.9, 'iris_104': 3.0, 'iris_105': 3.0, 'iris_106': 2.5, 'iris_107': 2.9, 'iris_108': 2.5, 'iris_109': 3.6, 'iris_110': 3.2, 'iris_111': 2.7, 'iris_112': 3.0, 'iris_113': 2.5, 'iris_114': 2.8, 'iris_115': 3.2, 'iris_116': 3.0, 'iris_117': 3.8, 'iris_118': 2.6, 'iris_119': 2.2, 'iris_120': 3.2, 'iris_121': 2.8, 'iris_122': 2.8, 'iris_123': 2.7, 'iris_124': 3.3, 'iris_125': 3.2, 'iris_126': 2.8, 'iris_127': 3.0, 'iris_128': 2.8, 'iris_129': 3.0, 'iris_130': 2.8, 'iris_131': 3.8, 'iris_132': 2.8, 'iris_133': 2.8, 'iris_134': 2.6, 'iris_135': 3.0, 'iris_136': 3.4, 'iris_137': 3.1, 'iris_138': 3.0, 'iris_139': 3.1, 'iris_140': 3.1, 'iris_141': 3.1, 'iris_142': 2.7, 'iris_143': 3.2, 'iris_144': 3.3, 'iris_145': 3.0, 'iris_146': 2.5, 'iris_147': 3.0, 'iris_148': 3.4, 'iris_149': 3.0}, 'petal_length': {'iris_0': 1.4, 'iris_1': 1.4, 'iris_2': 1.3, 'iris_3': 1.5, 'iris_4': 1.4, 'iris_5': 1.7, 'iris_6': 1.4, 'iris_7': 1.5, 'iris_8': 1.4, 'iris_9': 1.5, 'iris_10': 1.5, 'iris_11': 1.6, 'iris_12': 1.4, 'iris_13': 1.1, 'iris_14': 1.2, 'iris_15': 1.5, 'iris_16': 1.3, 'iris_17': 1.4, 'iris_18': 1.7, 'iris_19': 1.5, 'iris_20': 1.7, 'iris_21': 1.5, 'iris_22': 1.0, 'iris_23': 1.7, 'iris_24': 1.9, 'iris_25': 1.6, 'iris_26': 1.6, 'iris_27': 1.5, 'iris_28': 1.4, 'iris_29': 1.6, 'iris_30': 1.6, 'iris_31': 1.5, 'iris_32': 1.5, 'iris_33': 1.4, 'iris_34': 1.5, 'iris_35': 1.2, 'iris_36': 1.3, 'iris_37': 1.4, 'iris_38': 1.3, 'iris_39': 1.5, 'iris_40': 1.3, 'iris_41': 1.3, 'iris_42': 1.3, 'iris_43': 1.6, 'iris_44': 1.9, 'iris_45': 1.4, 'iris_46': 1.6, 'iris_47': 1.4, 'iris_48': 1.5, 'iris_49': 1.4, 'iris_50': 4.7, 'iris_51': 4.5, 'iris_52': 4.9, 'iris_53': 4.0, 'iris_54': 4.6, 'iris_55': 4.5, 'iris_56': 4.7, 'iris_57': 3.3, 'iris_58': 4.6, 'iris_59': 3.9, 'iris_60': 3.5, 'iris_61': 4.2, 'iris_62': 4.0, 'iris_63': 4.7, 'iris_64': 3.6, 'iris_65': 4.4, 'iris_66': 4.5, 'iris_67': 4.1, 'iris_68': 4.5, 'iris_69': 3.9, 'iris_70': 4.8, 'iris_71': 4.0, 'iris_72': 4.9, 'iris_73': 4.7, 'iris_74': 4.3, 'iris_75': 4.4, 'iris_76': 4.8, 'iris_77': 5.0, 'iris_78': 4.5, 'iris_79': 3.5, 'iris_80': 3.8, 'iris_81': 3.7, 'iris_82': 3.9, 'iris_83': 5.1, 'iris_84': 4.5, 'iris_85': 4.5, 'iris_86': 4.7, 'iris_87': 4.4, 'iris_88': 4.1, 'iris_89': 4.0, 'iris_90': 4.4, 'iris_91': 4.6, 'iris_92': 4.0, 'iris_93': 3.3, 'iris_94': 4.2, 'iris_95': 4.2, 'iris_96': 4.2, 'iris_97': 4.3, 'iris_98': 3.0, 'iris_99': 4.1, 'iris_100': 6.0, 'iris_101': 5.1, 'iris_102': 5.9, 'iris_103': 5.6, 'iris_104': 5.8, 'iris_105': 6.6, 'iris_106': 4.5, 'iris_107': 6.3, 'iris_108': 5.8, 'iris_109': 6.1, 'iris_110': 5.1, 'iris_111': 5.3, 'iris_112': 5.5, 'iris_113': 5.0, 'iris_114': 5.1, 'iris_115': 5.3, 'iris_116': 5.5, 'iris_117': 6.7, 'iris_118': 6.9, 'iris_119': 5.0, 'iris_120': 5.7, 'iris_121': 4.9, 'iris_122': 6.7, 'iris_123': 4.9, 'iris_124': 5.7, 'iris_125': 6.0, 'iris_126': 4.8, 'iris_127': 4.9, 'iris_128': 5.6, 'iris_129': 5.8, 'iris_130': 6.1, 'iris_131': 6.4, 'iris_132': 5.6, 'iris_133': 5.1, 'iris_134': 5.6, 'iris_135': 6.1, 'iris_136': 5.6, 'iris_137': 5.5, 'iris_138': 4.8, 'iris_139': 5.4, 'iris_140': 5.6, 'iris_141': 5.1, 'iris_142': 5.1, 'iris_143': 5.9, 'iris_144': 5.7, 'iris_145': 5.2, 'iris_146': 5.0, 'iris_147': 5.2, 'iris_148': 5.4, 'iris_149': 5.1}, 'petal_width': {'iris_0': 0.2, 'iris_1': 0.2, 'iris_2': 0.2, 'iris_3': 0.2, 'iris_4': 0.2, 'iris_5': 0.4, 'iris_6': 0.3, 'iris_7': 0.2, 'iris_8': 0.2, 'iris_9': 0.1, 'iris_10': 0.2, 'iris_11': 0.2, 'iris_12': 0.1, 'iris_13': 0.1, 'iris_14': 0.2, 'iris_15': 0.4, 'iris_16': 0.4, 'iris_17': 0.3, 'iris_18': 0.3, 'iris_19': 0.3, 'iris_20': 0.2, 'iris_21': 0.4, 'iris_22': 0.2, 'iris_23': 0.5, 'iris_24': 0.2, 'iris_25': 0.2, 'iris_26': 0.4, 'iris_27': 0.2, 'iris_28': 0.2, 'iris_29': 0.2, 'iris_30': 0.2, 'iris_31': 0.4, 'iris_32': 0.1, 'iris_33': 0.2, 'iris_34': 0.2, 'iris_35': 0.2, 'iris_36': 0.2, 'iris_37': 0.1, 'iris_38': 0.2, 'iris_39': 0.2, 'iris_40': 0.3, 'iris_41': 0.3, 'iris_42': 0.2, 'iris_43': 0.6, 'iris_44': 0.4, 'iris_45': 0.3, 'iris_46': 0.2, 'iris_47': 0.2, 'iris_48': 0.2, 'iris_49': 0.2, 'iris_50': 1.4, 'iris_51': 1.5, 'iris_52': 1.5, 'iris_53': 1.3, 'iris_54': 1.5, 'iris_55': 1.3, 'iris_56': 1.6, 'iris_57': 1.0, 'iris_58': 1.3, 'iris_59': 1.4, 'iris_60': 1.0, 'iris_61': 1.5, 'iris_62': 1.0, 'iris_63': 1.4, 'iris_64': 1.3, 'iris_65': 1.4, 'iris_66': 1.5, 'iris_67': 1.0, 'iris_68': 1.5, 'iris_69': 1.1, 'iris_70': 1.8, 'iris_71': 1.3, 'iris_72': 1.5, 'iris_73': 1.2, 'iris_74': 1.3, 'iris_75': 1.4, 'iris_76': 1.4, 'iris_77': 1.7, 'iris_78': 1.5, 'iris_79': 1.0, 'iris_80': 1.1, 'iris_81': 1.0, 'iris_82': 1.2, 'iris_83': 1.6, 'iris_84': 1.5, 'iris_85': 1.6, 'iris_86': 1.5, 'iris_87': 1.3, 'iris_88': 1.3, 'iris_89': 1.3, 'iris_90': 1.2, 'iris_91': 1.4, 'iris_92': 1.2, 'iris_93': 1.0, 'iris_94': 1.3, 'iris_95': 1.2, 'iris_96': 1.3, 'iris_97': 1.3, 'iris_98': 1.1, 'iris_99': 1.3, 'iris_100': 2.5, 'iris_101': 1.9, 'iris_102': 2.1, 'iris_103': 1.8, 'iris_104': 2.2, 'iris_105': 2.1, 'iris_106': 1.7, 'iris_107': 1.8, 'iris_108': 1.8, 'iris_109': 2.5, 'iris_110': 2.0, 'iris_111': 1.9, 'iris_112': 2.1, 'iris_113': 2.0, 'iris_114': 2.4, 'iris_115': 2.3, 'iris_116': 1.8, 'iris_117': 2.2, 'iris_118': 2.3, 'iris_119': 1.5, 'iris_120': 2.3, 'iris_121': 2.0, 'iris_122': 2.0, 'iris_123': 1.8, 'iris_124': 2.1, 'iris_125': 1.8, 'iris_126': 1.8, 'iris_127': 1.8, 'iris_128': 2.1, 'iris_129': 1.6, 'iris_130': 1.9, 'iris_131': 2.0, 'iris_132': 2.2, 'iris_133': 1.5, 'iris_134': 1.4, 'iris_135': 2.3, 'iris_136': 2.4, 'iris_137': 1.8, 'iris_138': 1.8, 'iris_139': 2.1, 'iris_140': 2.4, 'iris_141': 2.3, 'iris_142': 1.9, 'iris_143': 2.3, 'iris_144': 2.5, 'iris_145': 2.3, 'iris_146': 1.9, 'iris_147': 2.0, 'iris_148': 2.3, 'iris_149': 1.8}})
y_iris = pd.Series({'iris_0': 'setosa', 'iris_1': 'setosa', 'iris_2': 'setosa', 'iris_3': 'setosa', 'iris_4': 'setosa', 'iris_5': 'setosa', 'iris_6': 'setosa', 'iris_7': 'setosa', 'iris_8': 'setosa', 'iris_9': 'setosa', 'iris_10': 'setosa', 'iris_11': 'setosa', 'iris_12': 'setosa', 'iris_13': 'setosa', 'iris_14': 'setosa', 'iris_15': 'setosa', 'iris_16': 'setosa', 'iris_17': 'setosa', 'iris_18': 'setosa', 'iris_19': 'setosa', 'iris_20': 'setosa', 'iris_21': 'setosa', 'iris_22': 'setosa', 'iris_23': 'setosa', 'iris_24': 'setosa', 'iris_25': 'setosa', 'iris_26': 'setosa', 'iris_27': 'setosa', 'iris_28': 'setosa', 'iris_29': 'setosa', 'iris_30': 'setosa', 'iris_31': 'setosa', 'iris_32': 'setosa', 'iris_33': 'setosa', 'iris_34': 'setosa', 'iris_35': 'setosa', 'iris_36': 'setosa', 'iris_37': 'setosa', 'iris_38': 'setosa', 'iris_39': 'setosa', 'iris_40': 'setosa', 'iris_41': 'setosa', 'iris_42': 'setosa', 'iris_43': 'setosa', 'iris_44': 'setosa', 'iris_45': 'setosa', 'iris_46': 'setosa', 'iris_47': 'setosa', 'iris_48': 'setosa', 'iris_49': 'setosa', 'iris_50': 'versicolor', 'iris_51': 'versicolor', 'iris_52': 'versicolor', 'iris_53': 'versicolor', 'iris_54': 'versicolor', 'iris_55': 'versicolor', 'iris_56': 'versicolor', 'iris_57': 'versicolor', 'iris_58': 'versicolor', 'iris_59': 'versicolor', 'iris_60': 'versicolor', 'iris_61': 'versicolor', 'iris_62': 'versicolor', 'iris_63': 'versicolor', 'iris_64': 'versicolor', 'iris_65': 'versicolor', 'iris_66': 'versicolor', 'iris_67': 'versicolor', 'iris_68': 'versicolor', 'iris_69': 'versicolor', 'iris_70': 'versicolor', 'iris_71': 'versicolor', 'iris_72': 'versicolor', 'iris_73': 'versicolor', 'iris_74': 'versicolor', 'iris_75': 'versicolor', 'iris_76': 'versicolor', 'iris_77': 'versicolor', 'iris_78': 'versicolor', 'iris_79': 'versicolor', 'iris_80': 'versicolor', 'iris_81': 'versicolor', 'iris_82': 'versicolor', 'iris_83': 'versicolor', 'iris_84': 'versicolor', 'iris_85': 'versicolor', 'iris_86': 'versicolor', 'iris_87': 'versicolor', 'iris_88': 'versicolor', 'iris_89': 'versicolor', 'iris_90': 'versicolor', 'iris_91': 'versicolor', 'iris_92': 'versicolor', 'iris_93': 'versicolor', 'iris_94': 'versicolor', 'iris_95': 'versicolor', 'iris_96': 'versicolor', 'iris_97': 'versicolor', 'iris_98': 'versicolor', 'iris_99': 'versicolor', 'iris_100': 'virginica', 'iris_101': 'virginica', 'iris_102': 'virginica', 'iris_103': 'virginica', 'iris_104': 'virginica', 'iris_105': 'virginica', 'iris_106': 'virginica', 'iris_107': 'virginica', 'iris_108': 'virginica', 'iris_109': 'virginica', 'iris_110': 'virginica', 'iris_111': 'virginica', 'iris_112': 'virginica', 'iris_113': 'virginica', 'iris_114': 'virginica', 'iris_115': 'virginica', 'iris_116': 'virginica', 'iris_117': 'virginica', 'iris_118': 'virginica', 'iris_119': 'virginica', 'iris_120': 'virginica', 'iris_121': 'virginica', 'iris_122': 'virginica', 'iris_123': 'virginica', 'iris_124': 'virginica', 'iris_125': 'virginica', 'iris_126': 'virginica', 'iris_127': 'virginica', 'iris_128': 'virginica', 'iris_129': 'virginica', 'iris_130': 'virginica', 'iris_131': 'virginica', 'iris_132': 'virginica', 'iris_133': 'virginica', 'iris_134': 'virginica', 'iris_135': 'virginica', 'iris_136': 'virginica', 'iris_137': 'virginica', 'iris_138': 'virginica', 'iris_139': 'virginica', 'iris_140': 'virginica', 'iris_141': 'virginica', 'iris_142': 'virginica', 'iris_143': 'virginica', 'iris_144': 'virginica', 'iris_145': 'virginica', 'iris_146': 'virginica', 'iris_147': 'virginica', 'iris_148': 'virginica', 'iris_149': 'virginica'})

# Get correlation matrix
data = OrderedDict()
for species, X in X_iris.groupby(y_iris):
data[species] = X.corr()
print("Species:", list(data.keys()), "\n", "Correlation matrix shapes:", list(map(lambda df:df.shape, data.values())), sep="")
# Species:['setosa', 'versicolor', 'virginica']
# Correlation matrix shape:[(4, 4), (4, 4), (4, 4)]

with plt.style.context("seaborn-white"):
fig, axes = plt.subplots(figsize=(13,3), ncols=len(data), sharey=True)
for i, (species, df_corr) in enumerate(data.items()):
sns.heatmap(df_corr, vmin=-1, vmax=1, cmap=plt.cm.seismic_r, ax=axes[i], cbar= (i == len(data) - 1), edgecolor="white", linewidth=1)

这是我的热图:

enter image description here

我想轮换这些方式。

示例 1(角度约 60 度):

How

示例 2(角度 0 度):

enter image description here

最终,我会尝试将轴与线连接在一起,例如底部的图中,但首先我需要找出如何定位这些预先存在的 ax 对象。

编辑:发布后,我找到了 https://matplotlib.org/3.1.1/gallery/images_contours_and_fields/affine_image.htmlhttps://docs.scipy.org/doc/scipy-1.1.0/reference/generated/scipy.ndimage.affine_transform.html但我还没有想出如何正确地将它与多个斧头一起使用并以这种方式排列它们。

我找到了一个 function可以在某种程度上做到这一点(示例 #2 图),但我无法对源代码进行逆向工程。

最佳答案

这里的技巧是为每个“地 block ”创建图像并将它们渲染在同一个“轴”上。根据文档中给出的示例:https://matplotlib.org/3.1.1/gallery/images_contours_and_fields/affine_image.html

import numpy
from matplotlib import pyplot
from matplotlib import transforms
from PIL import Image

fig, ax = pyplot.subplots()

for i in range(5):
data = numpy.random.rand(4,4)
im = ax.imshow(data, extent=[0, 10, 0, 4])
transform = transforms.Affine2D().skew_deg(0, 30).scale(0.5, 1).translate(5*i,0)
trans_data = transform + ax.transData
im.set_transform(trans_data)
ax.set_ylim(0,10)
ax.set_xlim(0,25)

pyplot.show()

这显然使用了随机数据,您必须将其替换为您自己的热图,并修改转换等。Heatmap

为了概括这一点,我们需要创建“图形”的图像。这可以通过以下函数非常笨拙地完成:

def create_plot_img():
f, ax = pyplot.subplots()
x = numpy.arange(4)
y = numpy.random.rand(4)
ax.plot(x,y, )
f.canvas.draw()
w,h = f.canvas.get_width_height()
arr = numpy.fromstring(f.canvas.tostring_argb(), dtype=numpy.uint8)
arr.shape = (w,h,4)
arr = numpy.roll(arr, 3, axis = 2)
return Image.frombytes( "RGBA", (w,h), arr.tostring())

同样,这需要大量修改才能满足您的需求。 Line Plot

编辑:“create_plot_img”函数的前四行,在这个例子中只是生成一个非常简单的随机数据线图的通用代码。这可以替换为您希望的任何 matplotlib plot/scatter/3Dplot/等。

要在主代码(第一个代码块)中使用它,只需更改以下行:

data = numpy.random.rand(4,4)

到:

data = create_plot_img()

编辑#2:绘制以下评论中给出的示例的完整代码:

import numpy
from matplotlib import pyplot
from matplotlib import transforms
from PIL import Image

def create_plot_img(i):
f, ax = pyplot.subplots()
x = numpy.random.RandomState(i).normal(size=50)
y = x**2
ax.plot(x,y, )
f.canvas.draw()
w,h = f.canvas.get_width_height()
arr = numpy.fromstring(f.canvas.tostring_argb(), dtype=numpy.uint8)
arr.shape = (w,h,4)
arr = numpy.roll(arr, 3, axis = 2)
return Image.frombytes( "RGBA", (w,h), arr.tostring())

fig, ax = pyplot.subplots()

for i in range(5):
data = create_plot_img(i)
im = ax.imshow(data, extent=[0, 10, 0, 4])
transform = transforms.Affine2D().skew_deg(0, 30).scale(0.5,1).translate(5*i,0)
trans_data = transform + ax.transData
im.set_transform(trans_data)
ax.set_ylim(0,10)
ax.set_xlim(0,25)
pyplot.show()

关于python - 如何定向 matplotlib ax 对象以沿时间序列线(affine_transform、mtransform)连续绘制?,我们在Stack Overflow上找到一个类似的问题: https://stackoverflow.com/questions/57563096/

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