142 lines
5.0 KiB
Python
Executable File
142 lines
5.0 KiB
Python
Executable File
#!/home/pi/BirdNET-Pi/birdnet/bin/python3
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import os
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import configparser
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import pandas as pd
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import seaborn as sns
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import numpy as np
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import matplotlib.pyplot as plt
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from matplotlib.colors import LogNorm
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from datetime import datetime
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import textwrap
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import sqlite3
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conn = sqlite3.connect('/home/pi/BirdNET-Pi/scripts/birds.db')
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df = pd.read_sql_query("SELECT * from detections", conn)
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cursor = conn.cursor()
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table_rows = cursor.fetchall()
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#df=pd.DataFrame(table_rows)
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#Convert Date and Time Fields to Panda's format
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df['Date']=pd.to_datetime(df['Date'])
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df['Time']=pd.to_datetime(df['Time'], unit='ns')
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#Add round hours to dataframe
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df['Hour of Day'] = [r.hour for r in df.Time]
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#Create separate dataframes for separate locations
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df_plt=df #Default to use the whole Dbase
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#Get todays readings
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now = datetime.now()
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df_plt_today = df_plt[df_plt['Date']==now.strftime("%Y-%m-%d")]
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#Set number of species to report
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#For ALL
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readings = len(df_plt_today['Com_Name'].value_counts())
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# Uncomment for user selection
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readings = 10
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plt_top10_today = (df_plt_today['Com_Name'].value_counts()[:readings])
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df_plt_top10_today = df_plt_today[df_plt_today.Com_Name.isin(plt_top10_today.index)]
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#Set Palette for graphics
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pal = "Greens"
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#Set up plot axes and titles
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# f, axs = plt.subplots(1, 3, figsize = (10, 5 * vert_scale), gridspec_kw=dict(width_ratios=[3, 2, 5]))
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vert_scale = readings / 10
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f, axs = plt.subplots(1, 2, figsize = (10, 5 * vert_scale), gridspec_kw=dict(width_ratios=[3, 6]), facecolor='#77C487')
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plt.subplots_adjust(left=None, bottom=None, right=None, top=None, wspace=0, hspace=0)
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#generate y-axis order for all figures based on frequency
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freq_order = pd.value_counts(df_plt_top10_today['Com_Name']).iloc[:readings].index
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# this groups by name and calculates mean/max conf
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confmax = df_plt_top10_today.groupby('Com_Name')['Confidence'].max()
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confavg = df_plt_top10_today.groupby('Com_Name')['Confidence'].mean()
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#reorder confmax/avg to detection frequency order
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confmax = confmax.reindex(freq_order)
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confavg = confavg.reindex(freq_order)
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# norm avg values for color palette
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norm = plt.Normalize(confavg.values.min(), confavg.values.max())
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# bars of frequency plot based on avg color palette
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colors = plt.cm.Greens(norm(confavg))
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#Generate frequency plot
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plot=sns.countplot(y='Com_Name', data = df_plt_top10_today, palette = colors, order=freq_order, ax=axs[0])
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# for container in axs[0].containers:
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# axs[0].bar_label(containers)
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# Function to show value on bars - from https://stackoverflow.com/questions/43214978/seaborn-barplot-displaying-values
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def show_values_on_bars(ax,label):
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i = 0
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for p in ax.patches:
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_x = p.get_x() + p.get_width()* 0.9
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_y = p.get_y() + p.get_height() / 2
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value = '{:.0%}'.format(label[i])
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# Uncomment for Species Count Total
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# value = '{:,}'.format(p.get_width())
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ax.text(_x, _y, value, ha='center', va='center', size=8, fontweight='bold', color='darkgreen', bbox=dict(facecolor='lightgrey',pad = 4.0))
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i=i+1
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# Prints Max Confidence on bars
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show_values_on_bars(axs[0],confmax)
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#Try plot grid lines between bars - problem at the moment plots grid lines on bars - want between bars
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# plot.grid(True, axis='y')
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z=plot.get_ymajorticklabels()
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plot.set_yticklabels(['\n'.join(textwrap.wrap(ticklabel.get_text(),15)) for ticklabel in plot.get_yticklabels()], fontsize = 10)
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plot.set(ylabel=None)
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plot.set(xlabel="Detections")
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# Comma formatting for when your Detections are >1,000
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# current_values=plot.gca().get_xticks()
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# plt.gca().set_xticklabels(['{:,0f}'.format(x) for x in current_values])
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#If you want violin/box plots uncomment here and ** above
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# plot = sns.boxenplot(x=df_plt_top10_today['Confidence']*100,color='Green', y=df_plt_top10_today['Com_Name'], ax=axs[1],order=freq_order)
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# plot.set(xlabel="Confidence", ylabel=None,yticklabels=[])
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#Generate crosstab matrix for heatmap plot
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heat = pd.crosstab(df_plt_top10_today['Com_Name'],df_plt_top10_today['Hour of Day'])
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#Order heatmap Birds by frequency of occurrance
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heat.index = pd.CategoricalIndex(heat.index, categories = freq_order)
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heat.sort_index(level=0, inplace=True)
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hours_in_day = pd.Series(data = range(0,24))
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heat_frame = pd.DataFrame(data=0, index=heat.index, columns = hours_in_day)
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heat=(heat+heat_frame).fillna(0)
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#Generatie heatmap plot
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plot = sns.heatmap(heat, norm=LogNorm(), annot=True, fmt="g", annot_kws={"fontsize":7}, cmap = pal , square = False, cbar=False, linewidths = 0.5, linecolor = "Grey", ax=axs[1], yticklabels = False)
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plot.set_xticklabels(plot.get_xticklabels(), rotation = 0, size = 8)
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# Set heatmap border
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for _, spine in plot.spines.items():
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spine.set_visible(True)
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plot.set(ylabel=None)
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plot.set(xlabel="Hour of Day")
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#Set combined plot layout and titles
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#f.tight_layout()
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#f.subplots_adjust(top=0.95)
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#f.suptitle("DAILY OVERVIEW FOR "+ str(now.strftime("%d-%m-%Y %H:%M")),x=0.5,y=1.5,va='top')
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#Save combined plot
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savename='/home/pi/BirdSongs/Extracted/Charts/Combo-'+str(now.strftime("%Y-%m-%d"))+'.png'
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plt.savefig(savename)
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plt.show()
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plt.close()
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