def inference_tscnn_1layer(images, keep_prob, feat=[2]):

    _print_tensor_size(images, 'inference_tscnn')
    assert isinstance(keep_prob, object)

    conv_tensor = rsvp_quick_inference.inference_global_ts_filter(images, 'conv0', out_feat=feat[0])
    pool_tensor = rsvp_quick_inference.inference_pooling_n_filter(conv_tensor, kwidth=1)
    logits = rsvp_quick_inference.inference_fully_connected_1layer(pool_tensor, keep_prob)

    assert isinstance(logits, object)
    return logits
def inference_tscnn_1layer(images, keep_prob, feat=[2]):

    _print_tensor_size(images, 'inference_tscnn')
    assert isinstance(keep_prob, object)

    conv_tensor = rsvp_quick_inference.inference_global_ts_filter(
        images, 'conv0', out_feat=feat[0])

    logits = rsvp_quick_inference.inference_fully_connected_1layer(
        conv_tensor, keep_prob)

    assert isinstance(logits, object)
    return logits
Exemple #3
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def inference_tscnn(images, keep_prob, layer=2, feat=[2, 4]):

    _print_tensor_size(images, 'inference_tscnn')
    assert isinstance(keep_prob, object)

    # global temporal local temporal
    conv_tensor = rsvp_quick_inference.inference_global_ts_filter(images, 'conv0', out_feat=feat[0])
    pool_tensor = rsvp_quick_inference.inference_pooling_n_filter(conv_tensor, kwidth=1)

    for l in range(1, layer):
        # here use the 1*5 filter which go across channels
        conv_tensor = rsvp_quick_inference.inference_spatial_filter\
            (pool_tensor, 'conv'+str(l), in_feat=feat[l-1], out_feat=feat[l])
        # the pooling should have the width padding to 1 because we only consider channel correlation
        pool_tensor = rsvp_quick_inference.inference_pooling_n_filter(conv_tensor, kwidth=1)

    logits = rsvp_quick_inference.inference_fully_connected_1layer(pool_tensor, keep_prob)

    assert isinstance(logits, object)
    return logits
Exemple #4
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def inference_tscnn(images, keep_prob, layer=2, feat=[2, 4]):

    _print_tensor_size(images, 'inference_tscnn')
    assert isinstance(keep_prob, object)

    # global temporal local temporal
    conv_tensor = rsvp_quick_inference.inference_global_ts_filter(images, 'conv0', out_feat=feat[0])
    pool_tensor = rsvp_quick_inference.inference_pooling_n_filter(conv_tensor, kwidth=1)

    for l in range(1, layer):
        # here use the 1*5 filter which go across channels
        conv_tensor = rsvp_quick_inference.inference_spatial_filter\
            (pool_tensor, 'conv'+str(l), in_feat=feat[l-1], out_feat=feat[l])
        # the pooling should have the width padding to 1 because we only consider channel correlation
        pool_tensor = rsvp_quick_inference.inference_pooling_n_filter(conv_tensor, kwidth=1)

    logits = rsvp_quick_inference.inference_fully_connected_1layer(pool_tensor, keep_prob)

    assert isinstance(logits, object)
    return logits