Beispiel #1
0
    def run(self, args):
        s = score.Score().load(args.infile)
        events = feats.event_list(s.data)
        histogram, lim = feats.rhythm_histogram(events, args.resolution)

        for i in xrange(args.resolution):
            print histogram[i],
        print " "
    def find_best_note_distribution(self, args):
        best_file_name = None
        best_score = 9000000000
        for filename in args.infile:
            if best_file_name is None:  # Avoids returning empty values
                best_file_name = filename

            with open(filename, 'rb') as handler:
                a = sc.Score().load(handler)
                event_list = feats.event_list(a.data)
                if len(event_list) > 0:  # Avoids empty scores
                    (max_range, mean_range, std_range) = \
                        feats.relative_range(event_list)
                    if max_range < best_score:
                        best_score = max_range
                        best_file_name = filename

        print best_file_name
    def find_best_note_distribution(self, args):
        best_file_name = None
        best_score = 9000000000
        for filename in args.infile:
            if best_file_name is None: # Avoids returning empty values
                best_file_name = filename

            with open(filename, 'rb') as handler:
                a = sc.Score().load(handler)
                event_list = feats.event_list(a.data)
                if len(event_list) > 0: # Avoids empty scores
                    (max_range, mean_range, std_range) = \
                        feats.relative_range(event_list)
                    if max_range < best_score:
                        best_score = max_range
                        best_file_name = filename


        print best_file_name
    def find_best_note_distribution(self, args):
        best_file_name = None
        best_score = 9000000000
        for filename in args.infile:
            if best_file_name is None:  # Avoids returning empty values
                best_file_name = filename

            with open(filename, 'rb') as handler:
                a = sc.Score().load(handler)
                event_list = feats.event_list(a.data)
                if len(event_list) > 0:  # Avoids empty scores
                    rhythm_histogram = feats.rhythm_histogram(event_list)[0]
                    e = scipy.stats.entropy(rhythm_histogram)

                    if e < best_score:
                        best_score = e
                        best_file_name = filename

        print best_file_name
Beispiel #5
0
    def run(self, args):
        s = score.Score().load(args.infile)
        events = feats.event_list(s.data)
        histogram = feats.interval_histogram(events, args.fold,\
                args.time_tolerance, args.duration)
        for i in xrange(args.fold):
            print histogram[i],

        if args.statistics is True:
            h = numpy.array(histogram)
            print numpy.mean(h),
            print numpy.std(h),
            print numpy.sum(numpy.array([h[i] * numpy.log2(h[i])\
                    for i in xrange(len(h))\
                    if h[i] > 0])),

            for i in xrange(4):
                m = numpy.argmax(h)
                print m,
                h[m] = 0

        print " "
Beispiel #6
0
    def run(self, args):
        s = score.Score().load(args.infile)
        events = feats.event_list(s.data)
        histogram = feats.interval_histogram(events, args.fold,\
                args.time_tolerance, args.duration)
        for i in xrange(args.fold):
            print histogram[i],

        if args.statistics is True:
            h = numpy.array(histogram)
            print numpy.mean(h),
            print numpy.std(h),
            print numpy.sum(numpy.array([h[i] * numpy.log2(h[i])\
                    for i in xrange(len(h))\
                    if h[i] > 0])),

            for i in xrange(4):
                m = numpy.argmax(h)
                print m,
                h[m] = 0

        print " "
Beispiel #7
0
 def run(self, args):
     s = score.Score().load(args.infile)
     events = feats.event_list(s.data)
     (maxRange, meanRange, devRange) = feats.relative_range(events,\
             args.time_tolerance, args.duration)
     print maxRange, meanRange, devRange
Beispiel #8
0
 def run(self, args):
     s = score.Score().load(args.infile)
     events = feats.event_list(s.data)
     (dMean, dDev, dMin, dMax) = feats.note_density(events)
     print dMean, dDev, dMin, dMax
Beispiel #9
0
 def run(self, args):
     s = score.Score().load(args.infile)
     events = feats.event_list(s.data)
     (dMean, dDev, dMin, dMax) = feats.note_density(events)
     print dMean, dDev, dMin, dMax
Beispiel #10
0
 def run(self, args):
     s = score.Score().load(args.infile)
     events = feats.event_list(s.data)
     (maxRange, meanRange, devRange) = feats.relative_range(events,\
             args.time_tolerance, args.duration)
     print maxRange, meanRange, devRange