Commit 9164809c by Yao Wang Committed by Wuwei Lin

Improve x86 roi align (#3296)

* Improve roi_align performance for x86

* Change test
parent 88163ec1
......@@ -13,3 +13,4 @@ from .bitserial_dense import schedule_bitserial_dense
from .depthwise_conv2d import schedule_depthwise_conv2d_NCHWc
from .dense import _schedule_dense, _schedule_dense_pack, _schedule_dense_nopack
from .batch_matmul import schedule_batch_matmul
from .roi_align import roi_align_nchw
# Licensed to the Apache Software Foundation (ASF) under one
# or more contributor license agreements. See the NOTICE file
# distributed with this work for additional information
# regarding copyright ownership. The ASF licenses this file
# to you under the Apache License, Version 2.0 (the
# "License"); you may not use this file except in compliance
# with the License. You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing,
# software distributed under the License is distributed on an
# "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
# KIND, either express or implied. See the License for the
# specific language governing permissions and limitations
# under the License.
# pylint: disable=invalid-name, no-member, too-many-locals, too-many-arguments, undefined-variable, too-many-nested-blocks, too-many-branches, too-many-statements
"""Non-maximum suppression operator for intel cpu"""
import tvm
from tvm import hybrid
from ..vision.rcnn import roi_align_nchw
@hybrid.script
def roi_align_nchw_ir(data, rois, pooled_size, spatial_scale, sample_ratio):
"""Hybrid routing fo ROI align operator in NCHW layout.
Parameters
----------
data : tvm.Tensor or numpy NDArray
4-D with shape [batch, channel, height, width]
rois : tvm.Tensor or numpy NDArray
2-D with shape [num_roi, 5]. The last dimension should be in format of
[batch_index, w_start, h_start, w_end, h_end]
pooled_size : tvm ConsExpr
[out_height, out_width]
spatial_scale : tvm.const
Ratio of input feature map height (or w) to raw image height (or w). Equals the reciprocal
of total stride in convolutional layers, which should be in range (0.0, 1.0]
sample_ratio : tvm.const
Sampling ratio of ROI align, using adaptive size by default.
Returns
-------
output : tvm.Tensor or numpy NDArray
4-D with shape [num_roi, channel, pooled_size, pooled_size]
"""
channels = data.shape[1]
height = data.shape[2]
width = data.shape[3]
num_rois = rois.shape[0]
pooled_size_h = pooled_size[0]
pooled_size_w = pooled_size[1]
output = output_tensor((num_rois, channels, pooled_size_h, pooled_size_w), data.dtype)
max_num_pc_index = height * width * pooled_size_h * pooled_size_w
w_pc = allocate((num_rois, max_num_pc_index, 4), data.dtype)
pos_pc = allocate((num_rois, max_num_pc_index, 4), "int32")
for n in parallel(num_rois):
roi_batch_index = int32(rois[n, 0])
roi_start_w = rois[n, 1] * spatial_scale
roi_start_h = rois[n, 2] * spatial_scale
roi_end_w = rois[n, 3] * spatial_scale
roi_end_h = rois[n, 4] * spatial_scale
roi_h = max(roi_end_h - roi_start_h, 1.0)
roi_w = max(roi_end_w - roi_start_w, 1.0)
bin_h = roi_h / pooled_size_h
bin_w = roi_w / pooled_size_w
roi_bin_grid_h = sample_ratio
roi_bin_grid_w = roi_bin_grid_h
div_h = roi_h / pooled_size_h
div_w = roi_w / pooled_size_w
rounded_div_h = int32(div_h) * 1.0
rounded_div_w = int32(div_w) * 1.0
if sample_ratio <= 0:
# Cannot use ceil function since hybrid script
# doesn't support Call as indexing
roi_bin_grid_h = int32(div_h)
roi_bin_grid_w = int32(div_w)
if rounded_div_h < div_h:
roi_bin_grid_h += 1
if rounded_div_w < div_w:
roi_bin_grid_w += 1
count = roi_bin_grid_h * roi_bin_grid_w
# Pre-calculate indices and weights shared by all channels.
# This is the key point of optimization.
pre_calc_index = 0
iy_upper = roi_bin_grid_h
ix_upper = roi_bin_grid_w
for ph in range(pooled_size_h):
for pw in range(pooled_size_w):
for iy in range(iy_upper):
yy = roi_start_h + ph * bin_h + (iy + 0.5) * bin_h / roi_bin_grid_h
for ix in range(ix_upper):
xx = roi_start_w + pw * bin_w + (ix + 0.5) * bin_w / roi_bin_grid_w
x = xx
y = yy
if y < -1.0 or y > height or x < -1.0 or x > width:
for i in range(4):
w_pc[n, pre_calc_index, i] = 0.0
pos_pc[n, pre_calc_index, i] = 0
else:
if y < 0.0:
y = 0.0
if x < 0.0:
x = 0.0
y_low = int32(y)
x_low = int32(x)
x_high = x_low + 1
y_high = y_low + 1
if y_low >= height - 1:
y_high = height - 1
y_low = y_high
y = float32(y_low)
if x_low >= width - 1:
x_high = width - 1
x_low = x_high
x = float32(x_low)
ly = y - y_low
lx = x - x_low
hy = 1.0 - ly
hx = 1.0 - lx
w1 = hy * hx
w2 = hy * lx
w3 = ly * hx
w4 = ly * lx
pos_pc[n, pre_calc_index, 0] = x_low
pos_pc[n, pre_calc_index, 1] = x_high
pos_pc[n, pre_calc_index, 2] = y_low
pos_pc[n, pre_calc_index, 3] = y_high
w_pc[n, pre_calc_index, 0] = w1
w_pc[n, pre_calc_index, 1] = w2
w_pc[n, pre_calc_index, 2] = w3
w_pc[n, pre_calc_index, 3] = w4
pre_calc_index += 1
for c in range(channels):
pre_calc_index = 0
for ph in range(pooled_size_h):
for pw in range(pooled_size_w):
output_val = 0.0
for iy in range(roi_bin_grid_h):
for ix in range(roi_bin_grid_w):
output_val += w_pc[n, pre_calc_index, 0] \
* data[roi_batch_index, c,
pos_pc[n, pre_calc_index, 2],
pos_pc[n, pre_calc_index, 0]] \
+ w_pc[n, pre_calc_index, 1] \
* data[roi_batch_index, c,
pos_pc[n, pre_calc_index, 2],
pos_pc[n, pre_calc_index, 1]] \
+ w_pc[n, pre_calc_index, 2] \
* data[roi_batch_index, c,
pos_pc[n, pre_calc_index, 3],
pos_pc[n, pre_calc_index, 0]] \
+ w_pc[n, pre_calc_index, 3] \
* data[roi_batch_index, c,
pos_pc[n, pre_calc_index, 3],
pos_pc[n, pre_calc_index, 1]]
pre_calc_index += 1
output_val /= count
output[n, c, ph, pw] = output_val
return output
@roi_align_nchw.register("cpu")
def roi_align_nchw_cpu(data, rois, pooled_size, spatial_scale, sample_ratio=-1):
"""ROI align operator in NCHW layout.
Parameters
----------
data : tvm.Tensor
4-D with shape [batch, channel, height, width]
rois : tvm.Tensor
2-D with shape [num_roi, 5]. The last dimension should be in format of
[batch_index, w_start, h_start, w_end, h_end]
pooled_size : int or list/tuple of two ints
output size, or [out_height, out_width]
spatial_scale : float
Ratio of input feature map height (or w) to raw image height (or w). Equals the reciprocal
of total stride in convolutional layers, which should be in range (0.0, 1.0]
sample_ratio : int
Optional sampling ratio of ROI align, using adaptive size by default.
Returns
-------
output : tvm.Tensor
4-D with shape [num_roi, channel, pooled_size, pooled_size]
"""
if not isinstance(pooled_size, (tuple, list)):
pooled_size = (pooled_size, pooled_size)
pooled_size = tvm.convert(pooled_size)
spatial_scale = tvm.const(spatial_scale, "float32")
sample_ratio = tvm.const(sample_ratio, "int32")
return roi_align_nchw_ir(data, rois, pooled_size, spatial_scale, sample_ratio)
......@@ -282,6 +282,7 @@ def verify_roi_align(batch, in_channel, in_size, num_roi, pooled_size, spatial_s
def test_roi_align():
verify_roi_align(1, 16, 32, 64, 7, 1.0, -1)
verify_roi_align(4, 16, 32, 64, 7, 0.5, 2)
verify_roi_align(1, 32, 32, 80, 8, 0.0625, 2)
def verify_roi_pool(batch, in_channel, in_size, num_roi, pooled_size, spatial_scale):
......
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