Ejemplo n.º 1
0
    -1.,
    0.,
])
params = py_indoor_context.ManhattanHyperParameters(w, 4., 6.)

w2 = np.array([
    2.,
    -.5,
    .1,
])
params2 = py_indoor_context.ManhattanHyperParameters(w2, 3., 7.)

train_ids = [20, 40, 60]
test_ids = [65, 70]

mgr = py_indoor_context.TrainingManager()
mgr.LoadSequence("lab_kitchen1", train_ids + test_ids)

fm = py_indoor_context.FeatureManager('/tmp')
for i in range(mgr.NumInstances()):
    fm.ComputeMockFeatures(mgr.GetInstance(i))
    fm.CommitFeatures()

train_instances = [mgr.GetInstance(i) for i in range(len(train_ids))]

test_instances = [
    mgr.GetInstance(i) for i in range(len(train_ids),
                                      len(train_ids) + len(test_ids))
]

r = training_helpers.Reporter(train_instances, test_instances, fm,
Ejemplo n.º 2
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import py_indoor_context as ic
mgr = ic.TrainingManager()
mgr.LoadSequence('lab_ground1', [32])