mirror of
https://github.com/gsi-upm/senpy
synced 2024-09-20 22:01:41 +00:00
91 lines
3.3 KiB
Python
91 lines
3.3 KiB
Python
from senpy.plugins import EmotionConversionPlugin
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from senpy.models import EmotionSet, Emotion, Error
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from collections import defaultdict
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import logging
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logger = logging.getLogger(__name__)
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class CentroidConversion(EmotionConversionPlugin):
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def __init__(self, info):
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if 'centroids' not in info:
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raise Error('Centroid conversion plugins should provide '
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'the centroids in their senpy file')
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if 'onyx:doesConversion' not in info:
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if 'centroids_direction' not in info:
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raise Error('Please, provide centroids direction')
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cf, ct = info['centroids_direction']
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info['onyx:doesConversion'] = [{
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'onyx:conversionFrom': cf,
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'onyx:conversionTo': ct
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}, {
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'onyx:conversionFrom': ct,
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'onyx:conversionTo': cf
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}]
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if 'aliases' in info:
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aliases = info['aliases']
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ncentroids = {}
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for k1, v1 in info['centroids'].items():
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nv1 = {}
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for k2, v2 in v1.items():
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nv1[aliases.get(k2, k2)] = v2
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ncentroids[aliases.get(k1, k1)] = nv1
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info['centroids'] = ncentroids
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super(CentroidConversion, self).__init__(info)
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def _forward_conversion(self, original):
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"""Sum the VAD value of all categories found."""
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res = Emotion()
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totalIntensities = defaultdict(float)
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for e in original.onyx__hasEmotion:
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category = e.onyx__hasEmotionCategory
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intensity = e.get("onyx__hasEmotionIntensity",1)
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if intensity == 0:
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continue
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if category in self.centroids:
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for dim, value in self.centroids[category].items():
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totalIntensities[dim] += intensity
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try:
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res[dim] += value * intensity
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except Exception:
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res[dim] = value * intensity
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for dim,intensity in totalIntensities.items():
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if intensity != 0:
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res[dim] /= intensity
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return res
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def _backwards_conversion(self, original):
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"""Find the closest category"""
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dimensions = list(self.centroids.values())[0]
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def distance(e1, e2):
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return sum((e1[k] - e2.get(k, 0)) for k in dimensions)
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emotion = ''
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mindistance = 10000000000000000000000.0
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for state in self.centroids:
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d = distance(self.centroids[state], original)
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if d < mindistance:
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mindistance = d
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emotion = state
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result = Emotion(onyx__hasEmotionCategory=emotion)
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return result
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def convert(self, emotionSet, fromModel, toModel, params):
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cf, ct = self.centroids_direction
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logger.debug(
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'{}\n{}\n{}\n{}'.format(emotionSet, fromModel, toModel, params))
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e = EmotionSet()
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if fromModel == cf and toModel == ct:
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e.onyx__hasEmotion.append(self._forward_conversion(emotionSet))
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elif fromModel == ct and toModel == cf:
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for i in emotionSet.onyx__hasEmotion:
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e.onyx__hasEmotion.append(self._backwards_conversion(i))
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else:
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raise Error('EMOTION MODEL NOT KNOWN')
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yield e
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