##| Copyright: (C) 2019-2020 Kevin Larke ##| License: GNU GPL version 3.0 or above. See the accompanying LICENSE file. import os,sys,json import common import matplotlib.pyplot as plt import plot_seq_1 def plot_calibrate( cfg, pitch, dataD ): dataL = [ (d['pulse_us'], d['hm']['db'], d['targetDb'], d['matchFl'],d['skipMeasFl'],d['annIdx']) for d in dataD['measD'][pitch] ] udmL = [(t[0],t[1],t[3]) for t in dataL] udmL = sorted( udmL, key=lambda x: x[0] ) usL,dbL,matchL = zip(*udmL) fig,ax = plt.subplots() musL = [us for us,db,m in udmL if m] mdbL = [db for us,db,m in udmL if m] ax.plot(musL,mdbL,marker='o',color='red',linestyle='None') ax.plot(usL,dbL,marker='.') initDataDir = os.path.expanduser(dataD['cfg']['inDir']) usL,dbL,_,_,_ = plot_seq_1.get_merged_pulse_db_measurements( initDataDir, int(pitch), cfg['analysisD'] ) ax.plot(usL,dbL,marker='.') plt.show() if __name__ == "__main__": inDir = sys.argv[1] cfgFn = sys.argv[2] pitch = sys.argv[3] cfg = common.parse_yaml_cfg(cfgFn) cfg = cfg.calibrateArgs dataFn = os.path.join(inDir,"meas.json") with open(dataFn,"r") as f: dataD = json.load(f) print("pitchL:",dataD['cfg']['pitchL'],"targetDbL:",dataD['cfg']['targetDbL']) plot_calibrate( cfg, pitch, dataD )