blob: 63d2f049ce9dd1c995fe787e697701fc1526a200 [file] [log] [blame]
// Copyright 2020 Google LLC
//
// This source code is licensed under the BSD-style license found in the
// LICENSE file in the root directory of this source tree.
#include <assert.h>
#include <math.h>
#include <stdbool.h>
#include <stddef.h>
#include <stdint.h>
#include <stdlib.h>
#include <string.h>
#include <xnnpack.h>
#include <xnnpack/allocator.h>
#include <xnnpack/operator.h>
#include <xnnpack/log.h>
#include <xnnpack/common.h>
#include <xnnpack/math.h>
#include <xnnpack/params.h>
#include <xnnpack/indirection.h>
enum xnn_status xnn_create_resize_bilinear2d_nchw_f32(
size_t channels,
size_t input_pixel_stride,
size_t output_pixel_stride,
uint32_t flags,
xnn_operator_t* resize_op_out)
{
xnn_operator_t resize_op = NULL;
enum xnn_status status = xnn_status_uninitialized;
if ((xnn_params.init_flags & XNN_INIT_FLAG_XNNPACK) == 0) {
xnn_log_error("failed to create %s operator: XNNPACK is not initialized",
xnn_operator_type_to_string(xnn_operator_type_resize_bilinear_nchw_f32));
goto error;
}
status = xnn_status_invalid_parameter;
if (channels == 0) {
xnn_log_error(
"failed to create %s operator with %zu channels: number of channels must be non-zero",
xnn_operator_type_to_string(xnn_operator_type_resize_bilinear_nchw_f32), channels);
goto error;
}
if (input_pixel_stride < channels) {
xnn_log_error(
"failed to create %s operator with input pixel stride of %zu: "
"stride must be at least as large as the number of channels (%zu)",
xnn_operator_type_to_string(xnn_operator_type_resize_bilinear_nchw_f32), input_pixel_stride, channels);
goto error;
}
if (output_pixel_stride < channels) {
xnn_log_error(
"failed to create %s operator with output pixel stride of %zu: "
"stride must be at least as large as the number of channels (%zu)",
xnn_operator_type_to_string(xnn_operator_type_resize_bilinear_nchw_f32), output_pixel_stride, channels);
goto error;
}
status = xnn_status_out_of_memory;
resize_op = xnn_allocate_zero_simd_memory(sizeof(struct xnn_operator));
if (resize_op == NULL) {
xnn_log_error(
"failed to allocate %zu bytes for %s operator descriptor",
sizeof(struct xnn_operator), xnn_operator_type_to_string(xnn_operator_type_resize_bilinear_nchw_f32));
goto error;
}
resize_op->channels = channels;
resize_op->input_pixel_stride = input_pixel_stride;
resize_op->output_pixel_stride = output_pixel_stride;
resize_op->type = xnn_operator_type_resize_bilinear_nchw_f32;
resize_op->flags = flags;
resize_op->state = xnn_run_state_invalid;
*resize_op_out = resize_op;
return xnn_status_success;
error:
xnn_delete_operator(resize_op);
return status;
}
enum xnn_status xnn_setup_resize_bilinear2d_nchw_f32(
xnn_operator_t resize_op,
size_t batch_size,
size_t input_height,
size_t input_width,
size_t output_height,
size_t output_width,
const float* input,
float* output,
pthreadpool_t threadpool)
{
if (resize_op->type != xnn_operator_type_resize_bilinear_nchw_f32) {
xnn_log_error("failed to setup operator: operator type mismatch (expected %s, got %s)",
xnn_operator_type_to_string(xnn_operator_type_resize_bilinear_nchw_f32),
xnn_operator_type_to_string(resize_op->type));
return xnn_status_invalid_parameter;
}
resize_op->state = xnn_run_state_invalid;
if ((xnn_params.init_flags & XNN_INIT_FLAG_XNNPACK) == 0) {
xnn_log_error("failed to setup %s operator: XNNPACK is not initialized",
xnn_operator_type_to_string(xnn_operator_type_resize_bilinear_nchw_f32));
return xnn_status_uninitialized;
}
if (input_width <= 1 || input_height <= 1) {
xnn_log_error(
"failed to setup %s operator with %zux%zu input: input dimensions must be greater than 1",
xnn_operator_type_to_string(xnn_operator_type_resize_bilinear_nchw_f32), input_width, input_height);
return xnn_status_invalid_parameter;
}
if (max(input_width, input_height) >= 16777216) {
xnn_log_error(
"failed to setup %s operator with %zux%zu input: input dimensions must be below 2**24",
xnn_operator_type_to_string(xnn_operator_type_resize_bilinear_nchw_f32), input_width, input_height);
return xnn_status_unsupported_parameter;
}
if (output_width == 0 || output_height == 0) {
xnn_log_error(
"failed to setup %s operator with %zux%zu output: output dimensions must be non-zero",
xnn_operator_type_to_string(xnn_operator_type_resize_bilinear_nchw_f32), output_width, output_height);
return xnn_status_invalid_parameter;
}
if (max(output_width, output_height) >= 16777216) {
xnn_log_error(
"failed to setup %s operator with %zux%zu output: output dimensions must be below 2**24",
xnn_operator_type_to_string(xnn_operator_type_resize_bilinear_nchw_f32), output_width, output_height);
return xnn_status_unsupported_parameter;
}
if (batch_size == 0) {
resize_op->state = xnn_run_state_skip;
return xnn_status_success;
}
if (output_height * output_width != resize_op->last_output_height * resize_op->last_output_width) {
const size_t indirection_buffer_size = sizeof(void*) * (output_height * output_width * 4);
const size_t packed_weights_size = sizeof(float) * (output_height * output_width * 2);
const void** indirection_buffer = (const void**) xnn_reallocate_memory(resize_op->indirection_buffer, indirection_buffer_size);
if (indirection_buffer == NULL) {
xnn_log_error(
"failed to allocate %zu bytes for %s operator indirection buffer",
indirection_buffer_size, xnn_operator_type_to_string(xnn_operator_type_resize_bilinear_nchw_f32));
return xnn_status_out_of_memory;
}
resize_op->indirection_buffer = indirection_buffer;
// Note: packed weights must be SIMD-aligned, so we can't use xnn_reallocate_memory
xnn_release_simd_memory(resize_op->packed_weights);
resize_op->packed_weights = xnn_allocate_simd_memory(packed_weights_size);
if (resize_op->packed_weights == NULL) {
xnn_log_error(
"failed to allocate %zu bytes for %s operator packed weights",
packed_weights_size, xnn_operator_type_to_string(xnn_operator_type_resize_bilinear_nchw_f32));
return xnn_status_out_of_memory;
}
}
const size_t input_pixel_stride_in_bytes = sizeof(float); // Since the layout in CHW the pixels
if (input_height != resize_op->last_input_height ||
input_width != resize_op->last_input_width ||
output_height != resize_op->last_output_height ||
output_width != resize_op->last_output_width)
{
const uint32_t flags = resize_op->flags;
xnn_indirection_init_resize_bilinear2d_chw_f32(
input_pixel_stride_in_bytes,
input_height, input_width,
output_height, output_width,
input, resize_op->indirection_buffer, resize_op->packed_weights,
!!(flags & XNN_FLAG_ALIGN_CORNERS),
!!(flags & XNN_FLAG_TENSORFLOW_LEGACY_MODE));
resize_op->last_input = input;
resize_op->last_input_height = input_height;
resize_op->last_input_width = input_width;
resize_op->last_output_height = output_height;
resize_op->last_output_width = output_width;
}
resize_op->context.resize_bilinear_chw = (struct resize_bilinear_chw_context) {
.output_pixels = output_height * output_width,
.channels = resize_op->channels,
.input_channel_stride = input_height * input_width * sizeof(float),
.indirect_input = resize_op->indirection_buffer,
.input_offset = (size_t) ((uintptr_t) input - (uintptr_t) resize_op->last_input),
.input_batch_stride = resize_op->input_pixel_stride * input_height * input_width * sizeof(float),
.packed_weights = resize_op->packed_weights,
.output = output,
.output_batch_stride = resize_op->output_pixel_stride * output_height * output_width * sizeof(float),
.output_channel_stride = output_height * output_width * sizeof(float),
.ukernel = xnn_params.f32.ibilinear_chw.ukernel,
};
const size_t num_threads = pthreadpool_get_threads_count(threadpool);
size_t output_channel_tile = resize_op->channels;
if (num_threads > 1) {
const size_t target_tiles_per_thread = 4;
const size_t max_channel_tile = divide_round_up(output_channel_tile, num_threads * target_tiles_per_thread);
if (max_channel_tile < output_channel_tile) {
const uint32_t output_channel_subtile = xnn_params.f32.ibilinear_chw.channel_tile;
output_channel_tile =
min(output_channel_tile,
divide_round_up(output_channel_tile, max_channel_tile * output_channel_subtile) * output_channel_subtile);
}
}
resize_op->compute.type = xnn_parallelization_type_2d_tile_1d;
resize_op->compute.task_2d_tile_1d = (pthreadpool_task_2d_tile_1d_t) xnn_compute_resize_bilinear_chw;
resize_op->compute.range[0] = batch_size;
resize_op->compute.range[1] = resize_op->channels;
resize_op->compute.tile[0] = output_channel_tile;
resize_op->state = xnn_run_state_ready;
return xnn_status_success;
}