eval_utils.py 1.49 KB
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import numpy as np

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def compute_split_parts(num_samples, num_parts):
    part_samples = num_samples // num_parts
    remain_samples = num_samples % num_parts
    if part_samples == 0:
        return [num_samples]
    if remain_samples == 0:
        return [part_samples] * num_parts
    else:
        return [part_samples] * num_parts + [remain_samples]

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def overall_filter(boxes):
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    ignore = np.zeros(boxes.shape[0], dtype=bool)  # all false
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    return ignore

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def distance_filter(boxes, level):
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    ignore = np.ones(boxes.shape[0], dtype=bool)  # all true
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    dist = np.sqrt(np.sum(boxes[:, 0:3] * boxes[:, 0:3], axis=1))

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    if level == 0:  # 0-30m
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        flag = dist < 30
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    elif level == 1:  # 30-50m
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        flag = (dist >= 30) & (dist < 50)
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    elif level == 2:  # 50m-inf
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        flag = dist >= 50
    else:
        assert False, 'level < 3 for distance metric, found level %s' % (str(level))

    ignore[flag] = False
    return ignore

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def overall_distance_filter(boxes, level):
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    ignore = np.ones(boxes.shape[0], dtype=bool)  # all true
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    dist = np.sqrt(np.sum(boxes[:, 0:3] * boxes[:, 0:3], axis=1))

    if level == 0:
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        flag = np.ones(boxes.shape[0], dtype=bool)
    elif level == 1:  # 0-30m
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        flag = dist < 30
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    elif level == 2:  # 30-50m
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        flag = (dist >= 30) & (dist < 50)
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    elif level == 3:  # 50m-inf
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        flag = dist >= 50
    else:
        assert False, 'level < 4 for overall & distance metric, found level %s' % (str(level))

    ignore[flag] = False
    return ignore