Exemplo n.º 1
0
def test_2layer_deconv(deconv_n4_hw4_c1_5x5):
    cf1 = ConvParams(**deconv_n4_hw4_c1_5x5)

    # 2nd layer filter
    fshape2 = (4, 3, 3)
    str_h = str_w = 2
    K, R, S = fshape2
    C, D, H, W, N = cf1.dimO  # 2nd layer input dimensions
    cf2 = ConvParams(C=C, D=D, H=H, W=W, N=N, K=K, R=R, S=S, str_h=str_h, str_w=str_w, deconv=True)

    # randomly initialize
    input_value = rng.uniform(-0.5, 0.5, cf1.ax_i)
    filter1_value = rng.uniform(-0.5, 0.5, cf1.ax_f)
    filter2_value = rng.uniform(-0.5, 0.5, cf2.ax_f)
    error_value = rng.uniform(-0.5, 0.5, cf2.ax_o)

    inputs = ng.placeholder(cf1.ax_i)
    filters1 = ng.placeholder(cf1.ax_f)
    filters2 = ng.placeholder(cf2.ax_f)
    errors = ng.placeholder(cf2.ax_o)

    out1 = ng.deconvolution(cf1.conv_params, inputs, filters1, axes=cf1.ax_o)
    out2 = ng.deconvolution(cf2.conv_params, out1, filters2, axes=cf2.ax_o)

    bprop_out = ng.deriv(out2, inputs, errors)
    updat_out2 = ng.deriv(out2, filters2, errors)
    updat_out1 = ng.deriv(out2, filters1, errors)

    with executor([out1, out2, bprop_out, updat_out1, updat_out2],
                  inputs, filters1, filters2, errors) as conv_executor:
        out1_ng, out2_ng, gradI_ng, gradF1_ng, gradF2_ng = \
            conv_executor(input_value, filter1_value, filter2_value, error_value)

    # Compute reference with NumPy
    # fprop
    out1_np = reference_deconv_fprop(cf1.conv_params, input_value, filter1_value)
    out2_np = reference_deconv_fprop(cf2.conv_params, out1_np, filter2_value)
    # bprop
    gradI2_np, gradF2_np = reference_deconv_bprop(cf2.conv_params,
                                                  error_value,
                                                  out1_np,
                                                  filter2_value)
    gradI1_np, gradF1_np = reference_deconv_bprop(cf1.conv_params,
                                                  gradI2_np,
                                                  input_value,
                                                  filter1_value)

    # Compare fprop
    assert np.allclose(out1_ng, out1_np, rtol=0.01, atol=0)
    assert np.allclose(out2_ng, out2_np, rtol=0.01, atol=0)

    # Compare bprop
    assert np.allclose(gradI_ng, gradI1_np, rtol=0.01, atol=0)

    # Compare update
    assert np.allclose(gradF1_ng, gradF1_np, rtol=0.01, atol=0)
    assert np.allclose(gradF2_ng, gradF2_np, rtol=0.01, atol=0)
Exemplo n.º 2
0
def test_deconv(transformer_factory, deconv_n4_hw4_c1_5x5):
    cf = ConvParams(**deconv_n4_hw4_c1_5x5)

    # randomly initialize
    input_value = rng.uniform(-0.5, 0.5, cf.ax_i)
    filter_value = rng.uniform(-0.5, 0.5, cf.ax_f)
    error_value = rng.uniform(-0.5, 0.5, cf.ax_o)

    inputs = ng.placeholder(cf.ax_i)
    filters = ng.placeholder(cf.ax_f)
    errors = ng.placeholder(cf.ax_o)

    output = ng.deconvolution(cf.conv_params, inputs, filters, axes=cf.ax_o)
    bprop_out = ng.deriv(output, inputs, errors)
    updat_out = ng.deriv(output, filters, errors)

    with executor([output, bprop_out, updat_out], inputs, filters,
                  errors) as conv_executor:
        result_ng, gradI_ng, gradF_ng = conv_executor(input_value,
                                                      filter_value,
                                                      error_value)

    # Compute reference with NumPy
    result_np = reference_deconv_fprop(cf.conv_params, input_value,
                                       filter_value)
    gradI_np, gradF_np = reference_deconv_bprop(cf.conv_params, error_value,
                                                input_value, filter_value)

    # Compare fprop
    assert np.allclose(result_ng, result_np, rtol=0.1, atol=0)

    # Compare bprop
    assert np.allclose(gradI_ng, gradI_np, rtol=0.1, atol=0)

    # Compare update
    assert np.allclose(gradF_ng, gradF_np, rtol=0.1, atol=0)