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Moritz Pflanzer3ce3ff42017-07-21 17:41:02 +01001/*
Giorgio Arena1f9ca1d2018-03-01 11:13:45 +00002 * Copyright (c) 2017-2018 ARM Limited.
Moritz Pflanzer3ce3ff42017-07-21 17:41:02 +01003 *
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 */
Moritz Pflanzera09de0c2017-09-01 20:41:12 +010024#include "tests/validation/Helpers.h"
Moritz Pflanzer3ce3ff42017-07-21 17:41:02 +010025
Giorgio Arena1f9ca1d2018-03-01 11:13:45 +000026#include <algorithm>
27#include <cmath>
28
Moritz Pflanzer3ce3ff42017-07-21 17:41:02 +010029namespace arm_compute
30{
31namespace test
32{
33namespace validation
34{
Moritz Pflanzer6c6597c2017-09-24 12:09:41 +010035void fill_mask_from_pattern(uint8_t *mask, int cols, int rows, MatrixPattern pattern)
36{
37 unsigned int v = 0;
38 std::mt19937 gen(library->seed());
39 std::bernoulli_distribution dist(0.5);
40
41 for(int r = 0; r < rows; ++r)
42 {
43 for(int c = 0; c < cols; ++c, ++v)
44 {
45 uint8_t val = 0;
46
47 switch(pattern)
48 {
49 case MatrixPattern::BOX:
50 val = 255;
51 break;
52 case MatrixPattern::CROSS:
53 val = ((r == (rows / 2)) || (c == (cols / 2))) ? 255 : 0;
54 break;
55 case MatrixPattern::DISK:
56 val = (((r - rows / 2.0f + 0.5f) * (r - rows / 2.0f + 0.5f)) / ((rows / 2.0f) * (rows / 2.0f)) + ((c - cols / 2.0f + 0.5f) * (c - cols / 2.0f + 0.5f)) / ((cols / 2.0f) *
57 (cols / 2.0f))) <= 1.0f ? 255 : 0;
58 break;
59 case MatrixPattern::OTHER:
60 val = (dist(gen) ? 0 : 255);
61 break;
62 default:
63 return;
64 }
65
66 mask[v] = val;
67 }
68 }
69
70 if(pattern == MatrixPattern::OTHER)
71 {
72 std::uniform_int_distribution<uint8_t> distribution_u8(0, ((cols * rows) - 1));
73 mask[distribution_u8(gen)] = 255;
74 }
75}
76
Moritz Pflanzer3ce3ff42017-07-21 17:41:02 +010077TensorShape calculate_depth_concatenate_shape(const std::vector<TensorShape> &input_shapes)
78{
79 ARM_COMPUTE_ERROR_ON(input_shapes.empty());
80
81 TensorShape out_shape = input_shapes[0];
82
83 size_t max_x = 0;
84 size_t max_y = 0;
85 size_t depth = 0;
86
87 for(const auto &shape : input_shapes)
88 {
89 max_x = std::max(shape.x(), max_x);
90 max_y = std::max(shape.y(), max_y);
91 depth += shape.z();
92 }
93
94 out_shape.set(0, max_x);
95 out_shape.set(1, max_y);
96 out_shape.set(2, depth);
97
98 return out_shape;
99}
Moritz Pflanzer6c6597c2017-09-24 12:09:41 +0100100
101HarrisCornersParameters harris_corners_parameters()
102{
103 HarrisCornersParameters params;
104
105 std::mt19937 gen(library->seed());
Vidhya Sudhan Loganathan851a3222018-05-11 14:26:51 +0100106 std::uniform_real_distribution<float> threshold_dist(0.f, 0.001f);
Moritz Pflanzer6c6597c2017-09-24 12:09:41 +0100107 std::uniform_real_distribution<float> sensitivity(0.04f, 0.15f);
108 std::uniform_real_distribution<float> euclidean_distance(0.f, 30.f);
109 std::uniform_int_distribution<uint8_t> int_dist(0, 255);
110
111 params.threshold = threshold_dist(gen);
112 params.sensitivity = sensitivity(gen);
113 params.min_dist = euclidean_distance(gen);
114 params.constant_border_value = int_dist(gen);
115
116 return params;
117}
Anton Lokhmotovaf6204c2017-11-08 09:34:19 +0000118
119SimpleTensor<float> convert_from_asymmetric(const SimpleTensor<uint8_t> &src)
120{
121 const QuantizationInfo &quantization_info = src.quantization_info();
Michalis Spyrou57dac842018-03-01 16:03:50 +0000122 SimpleTensor<float> dst{ src.shape(), DataType::F32, 1, 0, QuantizationInfo(), src.data_layout() };
123
Anton Lokhmotovaf6204c2017-11-08 09:34:19 +0000124 for(int i = 0; i < src.num_elements(); ++i)
125 {
126 dst[i] = quantization_info.dequantize(src[i]);
127 }
128 return dst;
129}
130
131SimpleTensor<uint8_t> convert_to_asymmetric(const SimpleTensor<float> &src, const QuantizationInfo &quantization_info)
132{
133 SimpleTensor<uint8_t> dst{ src.shape(), DataType::QASYMM8, 1, 0, quantization_info };
134 for(int i = 0; i < src.num_elements(); ++i)
135 {
Jaroslaw Rzepecki0a878ae2017-11-22 17:16:39 +0000136 dst[i] = quantization_info.quantize(src[i], RoundingPolicy::TO_NEAREST_UP);
Anton Lokhmotovaf6204c2017-11-08 09:34:19 +0000137 }
138 return dst;
139}
Giorgio Arena1f9ca1d2018-03-01 11:13:45 +0000140
141void matrix_multiply(const SimpleTensor<float> &a, const SimpleTensor<float> &b, SimpleTensor<float> &out)
142{
143 ARM_COMPUTE_ERROR_ON(a.shape()[0] != b.shape()[1]);
144 ARM_COMPUTE_ERROR_ON(a.shape()[1] != out.shape()[1]);
145 ARM_COMPUTE_ERROR_ON(b.shape()[0] != out.shape()[0]);
146
147 const int M = a.shape()[1]; // Rows
148 const int N = b.shape()[0]; // Cols
149 const int K = b.shape()[1];
150
151 for(int y = 0; y < M; ++y)
152 {
153 for(int x = 0; x < N; ++x)
154 {
155 float acc = 0.0f;
156 for(int k = 0; k < K; ++k)
157 {
158 acc += a[y * K + k] * b[x + k * N];
159 }
160
161 out[x + y * N] = acc;
162 }
163 }
164}
165
166void transpose_matrix(const SimpleTensor<float> &in, SimpleTensor<float> &out)
167{
168 ARM_COMPUTE_ERROR_ON((in.shape()[0] != out.shape()[1]) || (in.shape()[1] != out.shape()[0]));
169
170 const int width = in.shape()[0];
171 const int height = in.shape()[1];
172
173 for(int y = 0; y < height; ++y)
174 {
175 for(int x = 0; x < width; ++x)
176 {
177 const float val = in[x + y * width];
178
179 out[x * height + y] = val;
180 }
181 }
182}
183
184template <typename T>
185void get_tile(const SimpleTensor<T> &in, SimpleTensor<T> &tile, const Coordinates &coord)
186{
187 ARM_COMPUTE_ERROR_ON(tile.shape().num_dimensions() != 2);
188
189 const int w_tile = tile.shape()[0];
190 const int h_tile = tile.shape()[1];
191
192 // Fill the tile with zeros
193 std::fill(tile.data() + 0, (tile.data() + (w_tile * h_tile)), static_cast<T>(0));
194
195 // Check if with the dimensions greater than 2 we could have out-of-bound reads
196 for(size_t d = 2; d < Coordinates::num_max_dimensions; ++d)
197 {
198 if(coord[d] < 0 || coord[d] >= static_cast<int>(in.shape()[d]))
199 {
200 ARM_COMPUTE_ERROR("coord[d] < 0 || coord[d] >= in.shape()[d] with d >= 2");
201 }
202 }
203
204 // Since we could have out-of-bound reads along the X and Y dimensions,
205 // we start calculating the input address with x = 0 and y = 0
206 Coordinates start_coord = coord;
207 start_coord[0] = 0;
208 start_coord[1] = 0;
209
210 // Get input and roi pointers
211 auto in_ptr = static_cast<const T *>(in(start_coord));
212 auto roi_ptr = static_cast<T *>(tile.data());
213
214 const int x_in_start = std::max(0, coord[0]);
215 const int y_in_start = std::max(0, coord[1]);
216 const int x_in_end = std::min(static_cast<int>(in.shape()[0]), coord[0] + w_tile);
217 const int y_in_end = std::min(static_cast<int>(in.shape()[1]), coord[1] + h_tile);
218
219 // Number of elements to copy per row
220 const int n = x_in_end - x_in_start;
221
222 // Starting coordinates for the ROI
223 const int x_tile_start = coord[0] > 0 ? 0 : std::abs(coord[0]);
224 const int y_tile_start = coord[1] > 0 ? 0 : std::abs(coord[1]);
225
226 // Update input pointer
227 in_ptr += x_in_start;
228 in_ptr += (y_in_start * in.shape()[0]);
229
230 // Update ROI pointer
231 roi_ptr += x_tile_start;
232 roi_ptr += (y_tile_start * tile.shape()[0]);
233
234 for(int y = y_in_start; y < y_in_end; ++y)
235 {
236 // Copy per row
237 std::copy(in_ptr, in_ptr + n, roi_ptr);
238
239 in_ptr += in.shape()[0];
240 roi_ptr += tile.shape()[0];
241 }
242}
243
244template void get_tile(const SimpleTensor<float> &in, SimpleTensor<float> &roi, const Coordinates &coord);
Moritz Pflanzer3ce3ff42017-07-21 17:41:02 +0100245} // namespace validation
246} // namespace test
247} // namespace arm_compute