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path: root/arm_compute/core/utils/misc/ShapeCalculator.h
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/*
 * Copyright (c) 2017-2018 ARM Limited.
 *
 * SPDX-License-Identifier: MIT
 *
 * Permission is hereby granted, free of charge, to any person obtaining a copy
 * of this software and associated documentation files (the "Software"), to
 * deal in the Software without restriction, including without limitation the
 * rights to use, copy, modify, merge, publish, distribute, sublicense, and/or
 * sell copies of the Software, and to permit persons to whom the Software is
 * furnished to do so, subject to the following conditions:
 *
 * The above copyright notice and this permission notice shall be included in all
 * copies or substantial portions of the Software.
 *
 * THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR
 * IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY,
 * FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE
 * AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER
 * LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM,
 * OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE
 * SOFTWARE.
 */
#ifndef __ARM_COMPUTE_MISC_SHAPE_CALCULATOR_H__
#define __ARM_COMPUTE_MISC_SHAPE_CALCULATOR_H__

#include "arm_compute/core/Helpers.h"
#include "arm_compute/core/ITensorInfo.h"
#include "arm_compute/core/Utils.h"

namespace arm_compute
{
namespace misc
{
namespace shape_calculator
{
inline TensorShape compute_permutation_output_shape(const ITensorInfo &input, const PermutationVector &perm)
{
    TensorShape output_shape = input.tensor_shape();
    permute(output_shape, perm);
    return output_shape;
}
inline TensorShape compute_weights_reshaped_shape(const ITensorInfo &weights, bool has_bias = false)
{
    // Calculate output shape
    TensorShape weights_reshaped{ weights.tensor_shape() };
    weights_reshaped.collapse(3);
    const size_t tmp_dim = weights_reshaped[0];
    weights_reshaped.set(0, weights_reshaped[1]);
    weights_reshaped.set(1, tmp_dim + (has_bias ? 1 : 0));

    return weights_reshaped;
}
inline TensorShape compute_interleaved_shape(const ITensorInfo &a, int mult_interleave4x4_height = 1)
{
    // The interleaved output matrix will have the following shape: [ a_height * W, ceil(a_width / W) ] where W = 4 * mult_interleave4x4_height
    ARM_COMPUTE_ERROR_ON(mult_interleave4x4_height < 1);
    const int   interleave_width = 4 * mult_interleave4x4_height;
    TensorShape shape_interleaved_a{ a.tensor_shape() };
    shape_interleaved_a.set(0, a.dimension(0) * interleave_width);
    shape_interleaved_a.set(1, std::ceil(a.dimension(1) / static_cast<float>(interleave_width)));

    return shape_interleaved_a;
}
inline TensorShape compute_transpose1xW_shape(const ITensorInfo &b)
{
    // The transpose1xW output matrix will have the following shape: [ b_height * 16, ceil(b_width / 16.0f) ]
    TensorShape shape_transposed1xW_b{ b.tensor_shape() };
    shape_transposed1xW_b.set(0, b.dimension(1) * 16);
    shape_transposed1xW_b.set(1, std::ceil(b.dimension(0) / 16.f));

    return shape_transposed1xW_b;
}
inline TensorShape compute_transpose1xW_with_element_size_shape(const ITensorInfo &b, int mult_transpose1xW_width = 1)
{
    // Note: mult_transpose1xW_width expresses the number of chunks with size 1x(W) we want to store on the same row
    //       The transpose1xW output matrix will have the following shape:
    //       [ b_height * W, ceil(b_width / W) ] where W = (16 / element size of the tensor) * mult_transpose1xW_width
    ARM_COMPUTE_ERROR_ON(mult_transpose1xW_width < 1);
    TensorShape  shape_transposed1xW_b{ b.tensor_shape() };
    const size_t transpose_width = (16 / b.element_size()) * mult_transpose1xW_width;
    shape_transposed1xW_b.set(0, b.dimension(1) * transpose_width);
    shape_transposed1xW_b.set(1, static_cast<size_t>(std::ceil(b.dimension(0) / static_cast<float>(transpose_width))));

    return shape_transposed1xW_b;
}
inline TensorShape compute_reductionA_shape(const ITensorInfo &b)
{
    TensorShape shape_vector_sum_col{ b.tensor_shape() };
    if(shape_vector_sum_col.num_dimensions() > 1)
    {
        shape_vector_sum_col.remove_dimension(1);
    }

    return shape_vector_sum_col;
}
inline TensorShape compute_reductionB_shape(const ITensorInfo &a)
{
    TensorShape shape_vector_sum_row{ a.tensor_shape() };
    shape_vector_sum_row.set(Window::DimX, a.dimension(1));
    if(a.num_dimensions() > 1)
    {
        shape_vector_sum_row.remove_dimension(1);
    }

    return shape_vector_sum_row;
}
inline TensorShape compute_im2col_shape(const ITensorInfo &input)
{
    TensorShape shape_im2col{ input.tensor_shape() };
    shape_im2col.collapse(3);

    return shape_im2col;
}
inline TensorShape compute_col2im_shape(const ITensorInfo &input, std::pair<unsigned int, unsigned int> convolved_dims)
{
    TensorShape col2im_shape{ input.tensor_shape() };
    col2im_shape.set(0, convolved_dims.first);
    col2im_shape.set(1, convolved_dims.second);
    col2im_shape.set(2, input.tensor_shape()[0]);

    return col2im_shape;
}
inline TensorShape compute_transposed_shape(const ITensorInfo &input)
{
    TensorShape shape_transposed{ input.tensor_shape() };

    shape_transposed.set(0, input.dimension(1));
    shape_transposed.set(1, input.dimension(0));

    return shape_transposed;
}
inline TensorShape compute_depthwise_convolution_shape(const ITensorInfo &input, const ITensorInfo &weights, PadStrideInfo conv_info)
{
    const TensorShape input_shape{ input.tensor_shape() };
    const TensorShape weights_shape{ weights.tensor_shape() };

    unsigned int output_width  = 0;
    unsigned int output_height = 0;
    std::tie(output_width, output_height) = scaled_dimensions(input_shape.x(), input_shape.y(),
                                                              weights_shape.x(), weights_shape.y(),
                                                              conv_info);

    TensorShape output_shape{ input_shape };
    output_shape.set(0, output_width);
    output_shape.set(1, output_height);

    return output_shape;
}
inline TensorShape compute_deconvolution_shape(const ITensorInfo &input, unsigned int sx, unsigned int sy, unsigned int inner_border_right, unsigned int inner_border_top, const PadStrideInfo &info)
{
    TensorShape        scale_out_shape(input.tensor_shape());
    const unsigned int out_x = input.dimension(0) + (input.dimension(0) - 1) * (sx - 1) + inner_border_right + 2 * info.pad().first;
    const unsigned int out_y = input.dimension(1) + (input.dimension(1) - 1) * (sy - 1) + inner_border_top + 2 * info.pad().second;
    scale_out_shape.set(0, out_x);
    scale_out_shape.set(1, out_y);

    return scale_out_shape;
}
inline TensorShape compute_im2col_shape(const ITensorInfo *input, const int num_input_dimensions = 3)
{
    TensorShape output_shape{ input->tensor_shape() };

    output_shape.collapse(num_input_dimensions);

    return output_shape;
}
inline TensorShape compute_interleave_custom_shape(const TensorShape &input, const int x_interleave, const int y_interleave)
{
    TensorShape output_shape{ input };

    output_shape.set(0, output_shape.x() * x_interleave);
    output_shape.set(1, std::ceil(output_shape.y() / static_cast<float>(y_interleave)));

    return output_shape;
}
inline TensorShape compute_fully_connected_reshaped_weights_shape(const ITensorInfo *input, bool transpose_weights, bool is_batched_fc_layer, const int interleave)
{
    TensorShape output_shape{ input->tensor_shape() };

    // Transpose weights if the user hasn't done it
    if(transpose_weights)
    {
        output_shape = compute_transposed_shape(*input);
    }

    // If we run multiple batches we need 1xW transpose, too.
    if(is_batched_fc_layer)
    {
        output_shape = compute_transposed_shape(input->clone()->set_tensor_shape(output_shape));
        output_shape = compute_interleave_custom_shape(output_shape, interleave, interleave);
    }

    return output_shape;
}

inline TensorShape compute_winograd_filter_transform_shape(const ITensorInfo &input)
{
    // COMPMID-984 (giaiod01)
    TensorShape tensor_shape{ input.tensor_shape() };

    if(input.data_layout() == DataLayout::NCHW)
    {
        tensor_shape.remove_dimension(0);
        tensor_shape.set(Window::DimX, input.dimension(3));
        tensor_shape.set(Window::DimY, input.dimension(2));
        tensor_shape.set(Window::DimZ, 16);
    }
    else
    {
        tensor_shape.remove_dimension(1);
        tensor_shape.set(Window::DimY, input.dimension(2));
        tensor_shape.set(Window::DimZ, 16);
    }

    return tensor_shape;
}

inline TensorShape compute_winograd_input_transform_shape(const ITensorInfo &input, const PadStrideInfo &conv_info, const Size2D &kernel_size)
{
    // Compute height
    const unsigned int num_tiles_x = std::ceil((input.tensor_shape().x() - (kernel_size.width - 1) + conv_info.pad_left() + conv_info.pad_right()) / 2.f);
    const unsigned int num_tiles_y = std::ceil((input.tensor_shape().y() - (kernel_size.height - 1) + conv_info.pad_top() + conv_info.pad_bottom()) / 2.f);

    const unsigned int width  = input.tensor_shape()[get_data_layout_dimension_index(input.data_layout(), DataLayoutDimension::CHANNEL)];
    const unsigned int height = num_tiles_x * num_tiles_y;
    const unsigned int depth  = 16; // COMPMID-990

    TensorShape output_shape{ input.tensor_shape() };
    output_shape.set(0, width);
    output_shape.set(1, height);
    output_shape.set(2, depth);

    return output_shape;
}
inline TensorShape compute_deep_convolution_shape(const ITensorInfo &input, const ITensorInfo &weights, PadStrideInfo conv_info)
{
    const TensorShape input_shape{ input.tensor_shape() };
    const TensorShape weights_shape{ weights.tensor_shape() };

    unsigned int output_width  = 0;
    unsigned int output_height = 0;
    std::tie(output_width, output_height) = scaled_dimensions(input_shape.x(), input_shape.y(), weights_shape.x(), weights_shape.y(), conv_info);

    TensorShape output_shape{ input_shape };
    output_shape.set(0, output_width);
    output_shape.set(1, output_height);
    output_shape.set(2, weights_shape[3]);

    return output_shape;
}
} // namespace shape_calculator
} // namespace misc
} // namespace arm_compute
#endif /* __ARM_COMPUTE_MISC_SHAPE_CALCULATOR_H__ */