blob: 173b8f4c428ae5c14dd21b5a573ce0272fbacddb [file] [log] [blame]
Anthony Barbier6ff3b192017-09-04 18:44:23 +01001/*
2 * Copyright (c) 2016, 2017 ARM Limited.
3 *
4 * SPDX-License-Identifier: MIT
5 *
6 * Permission is hereby granted, free of charge, to any person obtaining a copy
7 * of this software and associated documentation files (the "Software"), to
8 * deal in the Software without restriction, including without limitation the
9 * rights to use, copy, modify, merge, publish, distribute, sublicense, and/or
10 * sell copies of the Software, and to permit persons to whom the Software is
11 * furnished to do so, subject to the following conditions:
12 *
13 * The above copyright notice and this permission notice shall be included in all
14 * copies or substantial portions of the Software.
15 *
16 * THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR
17 * IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY,
18 * FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE
19 * AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER
20 * LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM,
21 * OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE
22 * SOFTWARE.
23 */
24#include "arm_compute/runtime/NEON/functions/NEHOGMultiDetection.h"
25
26#include "arm_compute/core/Error.h"
27#include "arm_compute/core/Helpers.h"
28#include "arm_compute/core/TensorInfo.h"
29#include "arm_compute/runtime/NEON/NEScheduler.h"
30#include "arm_compute/runtime/Tensor.h"
31
32using namespace arm_compute;
33
34NEHOGMultiDetection::NEHOGMultiDetection()
35 : _gradient_kernel(), _orient_bin_kernel(), _block_norm_kernel(), _hog_detect_kernel(), _non_maxima_kernel(), _hog_space(), _hog_norm_space(), _detection_windows(), _mag(), _phase(),
36 _non_maxima_suppression(false), _num_orient_bin_kernel(0), _num_block_norm_kernel(0), _num_hog_detect_kernel(0)
37{
38}
39
40void NEHOGMultiDetection::configure(ITensor *input, const IMultiHOG *multi_hog, IDetectionWindowArray *detection_windows, const ISize2DArray *detection_window_strides, BorderMode border_mode,
41 uint8_t constant_border_value, float threshold, bool non_maxima_suppression, float min_distance)
42{
43 ARM_COMPUTE_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(input, 1, DataType::U8);
44 ARM_COMPUTE_ERROR_ON_INVALID_MULTI_HOG(multi_hog);
45 ARM_COMPUTE_ERROR_ON(nullptr == detection_windows);
46 ARM_COMPUTE_ERROR_ON(detection_window_strides->num_values() != multi_hog->num_models());
47
48 const size_t width = input->info()->dimension(Window::DimX);
49 const size_t height = input->info()->dimension(Window::DimY);
50 const TensorShape &shape_img = input->info()->tensor_shape();
51 const size_t num_models = multi_hog->num_models();
52 PhaseType phase_type = multi_hog->model(0)->info()->phase_type();
53
54 size_t prev_num_bins = multi_hog->model(0)->info()->num_bins();
55 Size2D prev_cell_size = multi_hog->model(0)->info()->cell_size();
56 Size2D prev_block_size = multi_hog->model(0)->info()->block_size();
57 Size2D prev_block_stride = multi_hog->model(0)->info()->block_stride();
58
59 /* Check if NEHOGOrientationBinningKernel and NEHOGBlockNormalizationKernel kernels can be skipped for a specific HOG data-object
60 *
61 * 1) NEHOGOrientationBinningKernel and NEHOGBlockNormalizationKernel are skipped if the cell size and the number of bins don't change.
62 * Since "multi_hog" is sorted,it is enough to check the HOG descriptors at level "ith" and level "(i-1)th
63 * 2) NEHOGBlockNormalizationKernel is skipped if the cell size, the number of bins and block size do not change.
64 * Since "multi_hog" is sorted,it is enough to check the HOG descriptors at level "ith" and level "(i-1)th
65 *
66 * @note Since the orientation binning and block normalization kernels can be skipped, we need to keep track of the input to process for each kernel
67 * with "input_orient_bin", "input_hog_detect" and "input_block_norm"
68 */
69 std::vector<size_t> input_orient_bin;
70 std::vector<size_t> input_hog_detect;
71 std::vector<std::pair<size_t, size_t>> input_block_norm;
72
73 input_orient_bin.push_back(0);
74 input_hog_detect.push_back(0);
75 input_block_norm.emplace_back(0, 0);
76
77 for(size_t i = 1; i < num_models; ++i)
78 {
79 size_t cur_num_bins = multi_hog->model(i)->info()->num_bins();
80 Size2D cur_cell_size = multi_hog->model(i)->info()->cell_size();
81 Size2D cur_block_size = multi_hog->model(i)->info()->block_size();
82 Size2D cur_block_stride = multi_hog->model(i)->info()->block_stride();
83
84 if((cur_num_bins != prev_num_bins) || (cur_cell_size.width != prev_cell_size.width) || (cur_cell_size.height != prev_cell_size.height))
85 {
86 prev_num_bins = cur_num_bins;
87 prev_cell_size = cur_cell_size;
88 prev_block_size = cur_block_size;
89 prev_block_stride = cur_block_stride;
90
91 // Compute orientation binning and block normalization kernels. Update input to process
92 input_orient_bin.push_back(i);
93 input_block_norm.emplace_back(i, input_orient_bin.size() - 1);
94 }
95 else if((cur_block_size.width != prev_block_size.width) || (cur_block_size.height != prev_block_size.height) || (cur_block_stride.width != prev_block_stride.width)
96 || (cur_block_stride.height != prev_block_stride.height))
97 {
98 prev_block_size = cur_block_size;
99 prev_block_stride = cur_block_stride;
100
101 // Compute block normalization kernel. Update input to process
102 input_block_norm.emplace_back(i, input_orient_bin.size() - 1);
103 }
104
105 // Update input to process for hog detector kernel
106 input_hog_detect.push_back(input_block_norm.size() - 1);
107 }
108
109 _detection_windows = detection_windows;
110 _non_maxima_suppression = non_maxima_suppression;
111 _num_orient_bin_kernel = input_orient_bin.size(); // Number of NEHOGOrientationBinningKernel kernels to compute
112 _num_block_norm_kernel = input_block_norm.size(); // Number of NEHOGBlockNormalizationKernel kernels to compute
113 _num_hog_detect_kernel = input_hog_detect.size(); // Number of NEHOGDetector functions to compute
114
115 _orient_bin_kernel = arm_compute::cpp14::make_unique<NEHOGOrientationBinningKernel[]>(_num_orient_bin_kernel);
116 _block_norm_kernel = arm_compute::cpp14::make_unique<NEHOGBlockNormalizationKernel[]>(_num_block_norm_kernel);
117 _hog_detect_kernel = arm_compute::cpp14::make_unique<NEHOGDetector[]>(_num_hog_detect_kernel);
118 _non_maxima_kernel = arm_compute::cpp14::make_unique<CPPDetectionWindowNonMaximaSuppressionKernel>();
119 _hog_space = arm_compute::cpp14::make_unique<Tensor[]>(_num_orient_bin_kernel);
120 _hog_norm_space = arm_compute::cpp14::make_unique<Tensor[]>(_num_block_norm_kernel);
121
122 // Allocate tensors for magnitude and phase
123 TensorInfo info_mag(shape_img, Format::S16);
124 _mag.allocator()->init(info_mag);
125
126 TensorInfo info_phase(shape_img, Format::U8);
127 _phase.allocator()->init(info_phase);
128
129 // Initialise gradient kernel
130 _gradient_kernel.configure(input, &_mag, &_phase, phase_type, border_mode, constant_border_value);
131
132 // Configure NETensor for the HOG space and orientation binning kernel
133 for(size_t i = 0; i < _num_orient_bin_kernel; ++i)
134 {
135 const size_t idx_multi_hog = input_orient_bin[i];
136
137 // Get the corresponding cell size and number of bins
138 const Size2D &cell = multi_hog->model(idx_multi_hog)->info()->cell_size();
139 const size_t num_bins = multi_hog->model(idx_multi_hog)->info()->num_bins();
140
141 // Calculate number of cells along the x and y directions for the hog_space
142 const size_t num_cells_x = width / cell.width;
143 const size_t num_cells_y = height / cell.height;
144
145 // TensorShape of hog space
146 TensorShape shape_hog_space = input->info()->tensor_shape();
147 shape_hog_space.set(Window::DimX, num_cells_x);
148 shape_hog_space.set(Window::DimY, num_cells_y);
149
150 // Allocate HOG space
151 TensorInfo info_space(shape_hog_space, num_bins, DataType::F32);
152 _hog_space[i].allocator()->init(info_space);
153
154 // Initialise orientation binning kernel
155 _orient_bin_kernel[i].configure(&_mag, &_phase, _hog_space.get() + i, multi_hog->model(idx_multi_hog)->info());
156 }
157
158 // Configure NETensor for the normalized HOG space and block normalization kernel
159 for(size_t i = 0; i < _num_block_norm_kernel; ++i)
160 {
161 const size_t idx_multi_hog = input_block_norm[i].first;
162 const size_t idx_orient_bin = input_block_norm[i].second;
163
164 // Allocate normalized HOG space
165 TensorInfo tensor_info(*(multi_hog->model(idx_multi_hog)->info()), width, height);
166 _hog_norm_space[i].allocator()->init(tensor_info);
167
168 // Initialize block normalization kernel
169 _block_norm_kernel[i].configure(_hog_space.get() + idx_orient_bin, _hog_norm_space.get() + i, multi_hog->model(idx_multi_hog)->info());
170 }
171
172 // Configure HOG detector kernel
173 for(size_t i = 0; i < _num_hog_detect_kernel; ++i)
174 {
175 const size_t idx_block_norm = input_hog_detect[i];
176
177 _hog_detect_kernel[i].configure(_hog_norm_space.get() + idx_block_norm, multi_hog->model(i), detection_windows, detection_window_strides->at(i), threshold, i);
178 }
179
180 // Configure non maxima suppression kernel
181 _non_maxima_kernel->configure(_detection_windows, min_distance);
182
183 // Allocate intermediate tensors
184 _mag.allocator()->allocate();
185 _phase.allocator()->allocate();
186
187 for(size_t i = 0; i < _num_orient_bin_kernel; ++i)
188 {
189 _hog_space[i].allocator()->allocate();
190 }
191
192 for(size_t i = 0; i < _num_block_norm_kernel; ++i)
193 {
194 _hog_norm_space[i].allocator()->allocate();
195 }
196}
197
198void NEHOGMultiDetection::run()
199{
200 ARM_COMPUTE_ERROR_ON_MSG(_detection_windows == nullptr, "Unconfigured function");
201
202 // Reset detection window
203 _detection_windows->clear();
204
205 // Run gradient
206 _gradient_kernel.run();
207
208 // Run orientation binning kernel
209 for(size_t i = 0; i < _num_orient_bin_kernel; ++i)
210 {
211 NEScheduler::get().schedule(_orient_bin_kernel.get() + i, Window::DimY);
212 }
213
214 // Run block normalization kernel
215 for(size_t i = 0; i < _num_block_norm_kernel; ++i)
216 {
217 NEScheduler::get().schedule(_block_norm_kernel.get() + i, Window::DimY);
218 }
219
220 // Run HOG detector kernel
221 for(size_t i = 0; i < _num_hog_detect_kernel; ++i)
222 {
223 _hog_detect_kernel[i].run();
224 }
225
226 // Run non-maxima suppression kernel if enabled
227 if(_non_maxima_suppression)
228 {
229 _non_maxima_kernel->run(_non_maxima_kernel->window());
230 }
231}