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telsoa014fcda012018-03-09 14:13:49 +00001//
2// Copyright © 2017 Arm Ltd. All rights reserved.
David Beckecb56cd2018-09-05 12:52:57 +01003// SPDX-License-Identifier: MIT
telsoa014fcda012018-03-09 14:13:49 +00004//
5#include "InferenceTestImage.hpp"
6
7#include <boost/core/ignore_unused.hpp>
8#include <boost/format.hpp>
9#include <boost/core/ignore_unused.hpp>
10#include <boost/numeric/conversion/cast.hpp>
11
12#include <array>
13
14#define STB_IMAGE_IMPLEMENTATION
Sadik Armagan93e2e402019-05-02 09:31:38 +010015#include <stb/stb_image.h>
telsoa014fcda012018-03-09 14:13:49 +000016
17#define STB_IMAGE_RESIZE_IMPLEMENTATION
Sadik Armagan93e2e402019-05-02 09:31:38 +010018#include <stb/stb_image_resize.h>
telsoa014fcda012018-03-09 14:13:49 +000019
20#define STB_IMAGE_WRITE_IMPLEMENTATION
Sadik Armagan93e2e402019-05-02 09:31:38 +010021#include <stb/stb_image_write.h>
telsoa014fcda012018-03-09 14:13:49 +000022
23namespace
24{
25
26unsigned int GetImageChannelIndex(ImageChannelLayout channelLayout, ImageChannel channel)
27{
28 switch (channelLayout)
29 {
30 case ImageChannelLayout::Rgb:
31 return static_cast<unsigned int>(channel);
32 case ImageChannelLayout::Bgr:
33 return 2u - static_cast<unsigned int>(channel);
34 default:
35 throw UnknownImageChannelLayout(boost::str(boost::format("Unknown layout %1%")
36 % static_cast<int>(channelLayout)));
37 }
38}
39
telsoa01c577f2c2018-08-31 09:22:23 +010040inline float Lerp(float a, float b, float w)
41{
42 return w * b + (1.f - w) * a;
43}
44
45inline void PutData(std::vector<float> & data,
46 const unsigned int width,
47 const unsigned int x,
48 const unsigned int y,
49 const unsigned int c,
50 float value)
51{
52 data[(3*((y*width)+x)) + c] = value;
53}
54
55std::vector<float> ResizeBilinearAndNormalize(const InferenceTestImage & image,
56 const unsigned int outputWidth,
57 const unsigned int outputHeight,
FinnWilliamsArmaf8b72d2019-05-22 14:50:55 +010058 const float scale,
telsoa01c577f2c2018-08-31 09:22:23 +010059 const std::array<float, 3>& mean,
60 const std::array<float, 3>& stddev)
61{
62 std::vector<float> out;
63 out.resize(outputWidth * outputHeight * 3);
64
65 // We follow the definition of TensorFlow and AndroidNN: the top-left corner of a texel in the output
66 // image is projected into the input image to figure out the interpolants and weights. Note that this
67 // will yield different results than if projecting the centre of output texels.
68
69 const unsigned int inputWidth = image.GetWidth();
70 const unsigned int inputHeight = image.GetHeight();
71
72 // How much to scale pixel coordinates in the output image to get the corresponding pixel coordinates
73 // in the input image.
74 const float scaleY = boost::numeric_cast<float>(inputHeight) / boost::numeric_cast<float>(outputHeight);
75 const float scaleX = boost::numeric_cast<float>(inputWidth) / boost::numeric_cast<float>(outputWidth);
76
77 uint8_t rgb_x0y0[3];
78 uint8_t rgb_x1y0[3];
79 uint8_t rgb_x0y1[3];
80 uint8_t rgb_x1y1[3];
81
82 for (unsigned int y = 0; y < outputHeight; ++y)
83 {
84 // Corresponding real-valued height coordinate in input image.
85 const float iy = boost::numeric_cast<float>(y) * scaleY;
86
87 // Discrete height coordinate of top-left texel (in the 2x2 texel area used for interpolation).
88 const float fiy = floorf(iy);
89 const unsigned int y0 = boost::numeric_cast<unsigned int>(fiy);
90
91 // Interpolation weight (range [0,1])
92 const float yw = iy - fiy;
93
94 for (unsigned int x = 0; x < outputWidth; ++x)
95 {
96 // Real-valued and discrete width coordinates in input image.
97 const float ix = boost::numeric_cast<float>(x) * scaleX;
98 const float fix = floorf(ix);
99 const unsigned int x0 = boost::numeric_cast<unsigned int>(fix);
100
101 // Interpolation weight (range [0,1]).
102 const float xw = ix - fix;
103
104 // Discrete width/height coordinates of texels below and to the right of (x0, y0).
105 const unsigned int x1 = std::min(x0 + 1, inputWidth - 1u);
106 const unsigned int y1 = std::min(y0 + 1, inputHeight - 1u);
107
108 std::tie(rgb_x0y0[0], rgb_x0y0[1], rgb_x0y0[2]) = image.GetPixelAs3Channels(x0, y0);
109 std::tie(rgb_x1y0[0], rgb_x1y0[1], rgb_x1y0[2]) = image.GetPixelAs3Channels(x1, y0);
110 std::tie(rgb_x0y1[0], rgb_x0y1[1], rgb_x0y1[2]) = image.GetPixelAs3Channels(x0, y1);
111 std::tie(rgb_x1y1[0], rgb_x1y1[1], rgb_x1y1[2]) = image.GetPixelAs3Channels(x1, y1);
112
113 for (unsigned c=0; c<3; ++c)
114 {
115 const float ly0 = Lerp(float(rgb_x0y0[c]), float(rgb_x1y0[c]), xw);
116 const float ly1 = Lerp(float(rgb_x0y1[c]), float(rgb_x1y1[c]), xw);
117 const float l = Lerp(ly0, ly1, yw);
FinnWilliamsArmaf8b72d2019-05-22 14:50:55 +0100118 PutData(out, outputWidth, x, y, c, ((l / scale) - mean[c]) / stddev[c]);
telsoa01c577f2c2018-08-31 09:22:23 +0100119 }
120 }
121 }
122 return out;
123}
124
telsoa014fcda012018-03-09 14:13:49 +0000125} // namespace
126
127InferenceTestImage::InferenceTestImage(char const* filePath)
128 : m_Width(0u)
129 , m_Height(0u)
130 , m_NumChannels(0u)
131{
132 int width;
133 int height;
134 int channels;
135
136 using StbImageDataPtr = std::unique_ptr<unsigned char, decltype(&stbi_image_free)>;
137 StbImageDataPtr stbData(stbi_load(filePath, &width, &height, &channels, 0), &stbi_image_free);
138
139 if (stbData == nullptr)
140 {
141 throw InferenceTestImageLoadFailed(boost::str(boost::format("Could not load the image at %1%") % filePath));
142 }
143
144 if (width == 0 || height == 0)
145 {
146 throw InferenceTestImageLoadFailed(boost::str(boost::format("Could not load empty image at %1%") % filePath));
147 }
148
149 m_Width = boost::numeric_cast<unsigned int>(width);
150 m_Height = boost::numeric_cast<unsigned int>(height);
151 m_NumChannels = boost::numeric_cast<unsigned int>(channels);
152
153 const unsigned int sizeInBytes = GetSizeInBytes();
154 m_Data.resize(sizeInBytes);
155 memcpy(m_Data.data(), stbData.get(), sizeInBytes);
156}
157
158std::tuple<uint8_t, uint8_t, uint8_t> InferenceTestImage::GetPixelAs3Channels(unsigned int x, unsigned int y) const
159{
160 if (x >= m_Width || y >= m_Height)
161 {
162 throw InferenceTestImageOutOfBoundsAccess(boost::str(boost::format("Attempted out of bounds image access. "
163 "Requested (%1%, %2%). Maximum valid coordinates (%3%, %4%).") % x % y % (m_Width - 1) % (m_Height - 1)));
164 }
165
166 const unsigned int pixelOffset = x * GetNumChannels() + y * GetWidth() * GetNumChannels();
167 const uint8_t* const pixelData = m_Data.data() + pixelOffset;
168 BOOST_ASSERT(pixelData <= (m_Data.data() + GetSizeInBytes()));
169
170 std::array<uint8_t, 3> outPixelData;
171 outPixelData.fill(0);
172
173 const unsigned int maxChannelsInPixel = std::min(GetNumChannels(), static_cast<unsigned int>(outPixelData.size()));
174 for (unsigned int c = 0; c < maxChannelsInPixel; ++c)
175 {
176 outPixelData[c] = pixelData[c];
177 }
178
179 return std::make_tuple(outPixelData[0], outPixelData[1], outPixelData[2]);
180}
181
telsoa01c577f2c2018-08-31 09:22:23 +0100182
183void InferenceTestImage::StbResize(InferenceTestImage& im, const unsigned int newWidth, const unsigned int newHeight)
telsoa014fcda012018-03-09 14:13:49 +0000184{
telsoa01c577f2c2018-08-31 09:22:23 +0100185 std::vector<uint8_t> newData;
186 newData.resize(newWidth * newHeight * im.GetNumChannels() * im.GetSingleElementSizeInBytes());
187
188 // boost::numeric_cast<>() is used for user-provided data (protecting about overflows).
189 // static_cast<> is ok for internal data (assumes that, when internal data was originally provided by a user,
190 // a boost::numeric_cast<>() handled the conversion).
191 const int nW = boost::numeric_cast<int>(newWidth);
192 const int nH = boost::numeric_cast<int>(newHeight);
193
194 const int w = static_cast<int>(im.GetWidth());
195 const int h = static_cast<int>(im.GetHeight());
196 const int numChannels = static_cast<int>(im.GetNumChannels());
197
198 const int res = stbir_resize_uint8(im.m_Data.data(), w, h, 0, newData.data(), nW, nH, 0, numChannels);
199 if (res == 0)
200 {
201 throw InferenceTestImageResizeFailed("The resizing operation failed");
202 }
203
204 im.m_Data.swap(newData);
205 im.m_Width = newWidth;
206 im.m_Height = newHeight;
207}
208
209std::vector<float> InferenceTestImage::Resize(unsigned int newWidth,
210 unsigned int newHeight,
211 const armnn::CheckLocation& location,
212 const ResizingMethods meth,
213 const std::array<float, 3>& mean,
FinnWilliamsArmaf8b72d2019-05-22 14:50:55 +0100214 const std::array<float, 3>& stddev,
215 const float scale)
telsoa01c577f2c2018-08-31 09:22:23 +0100216{
217 std::vector<float> out;
telsoa014fcda012018-03-09 14:13:49 +0000218 if (newWidth == 0 || newHeight == 0)
219 {
220 throw InferenceTestImageResizeFailed(boost::str(boost::format("None of the dimensions passed to a resize "
221 "operation can be zero. Requested width: %1%. Requested height: %2%.") % newWidth % newHeight));
222 }
223
telsoa01c577f2c2018-08-31 09:22:23 +0100224 switch (meth) {
225 case ResizingMethods::STB:
226 {
227 StbResize(*this, newWidth, newHeight);
228 break;
229 }
230 case ResizingMethods::BilinearAndNormalized:
231 {
FinnWilliamsArmaf8b72d2019-05-22 14:50:55 +0100232 out = ResizeBilinearAndNormalize(*this, newWidth, newHeight, scale, mean, stddev);
telsoa01c577f2c2018-08-31 09:22:23 +0100233 break;
234 }
235 default:
236 throw InferenceTestImageResizeFailed(boost::str(
237 boost::format("Unknown resizing method asked ArmNN only supports {STB, BilinearAndNormalized} %1%")
238 % location.AsString()));
telsoa014fcda012018-03-09 14:13:49 +0000239 }
telsoa01c577f2c2018-08-31 09:22:23 +0100240 return out;
telsoa014fcda012018-03-09 14:13:49 +0000241}
242
243void InferenceTestImage::Write(WriteFormat format, const char* filePath) const
244{
245 const int w = static_cast<int>(GetWidth());
246 const int h = static_cast<int>(GetHeight());
247 const int numChannels = static_cast<int>(GetNumChannels());
248 int res = 0;
249
250 switch (format)
251 {
252 case WriteFormat::Png:
253 {
254 res = stbi_write_png(filePath, w, h, numChannels, m_Data.data(), 0);
255 break;
256 }
257 case WriteFormat::Bmp:
258 {
259 res = stbi_write_bmp(filePath, w, h, numChannels, m_Data.data());
260 break;
261 }
262 case WriteFormat::Tga:
263 {
264 res = stbi_write_tga(filePath, w, h, numChannels, m_Data.data());
265 break;
266 }
267 default:
268 throw InferenceTestImageWriteFailed(boost::str(boost::format("Unknown format %1%")
269 % static_cast<int>(format)));
270 }
271
272 if (res == 0)
273 {
274 throw InferenceTestImageWriteFailed(boost::str(boost::format("An error occurred when writing to file %1%")
275 % filePath));
276 }
277}
278
279template <typename TProcessValueCallable>
280std::vector<float> GetImageDataInArmNnLayoutAsFloats(ImageChannelLayout channelLayout,
281 const InferenceTestImage& image,
282 TProcessValueCallable processValue)
283{
284 const unsigned int h = image.GetHeight();
285 const unsigned int w = image.GetWidth();
286
287 std::vector<float> imageData;
288 imageData.resize(h * w * 3);
289
290 for (unsigned int j = 0; j < h; ++j)
291 {
292 for (unsigned int i = 0; i < w; ++i)
293 {
294 uint8_t r, g, b;
295 std::tie(r, g, b) = image.GetPixelAs3Channels(i, j);
296
297 // ArmNN order: C, H, W
298 const unsigned int rDstIndex = GetImageChannelIndex(channelLayout, ImageChannel::R) * h * w + j * w + i;
299 const unsigned int gDstIndex = GetImageChannelIndex(channelLayout, ImageChannel::G) * h * w + j * w + i;
300 const unsigned int bDstIndex = GetImageChannelIndex(channelLayout, ImageChannel::B) * h * w + j * w + i;
301
302 imageData[rDstIndex] = processValue(ImageChannel::R, float(r));
303 imageData[gDstIndex] = processValue(ImageChannel::G, float(g));
304 imageData[bDstIndex] = processValue(ImageChannel::B, float(b));
305 }
306 }
307
308 return imageData;
309}
310
311std::vector<float> GetImageDataInArmNnLayoutAsNormalizedFloats(ImageChannelLayout layout,
312 const InferenceTestImage& image)
313{
314 return GetImageDataInArmNnLayoutAsFloats(layout, image,
315 [](ImageChannel channel, float value)
316 {
317 boost::ignore_unused(channel);
318 return value / 255.f;
319 });
320}
321
322std::vector<float> GetImageDataInArmNnLayoutAsFloatsSubtractingMean(ImageChannelLayout layout,
323 const InferenceTestImage& image,
324 const std::array<float, 3>& mean)
325{
326 return GetImageDataInArmNnLayoutAsFloats(layout, image,
327 [layout, &mean](ImageChannel channel, float value)
328 {
329 const unsigned int channelIndex = GetImageChannelIndex(layout, channel);
330 return value - mean[channelIndex];
331 });
332}
surmeh01bceff2f2018-03-29 16:29:27 +0100333
334std::vector<float> GetImageDataAsNormalizedFloats(ImageChannelLayout layout,
335 const InferenceTestImage& image)
336{
337 std::vector<float> imageData;
338 const unsigned int h = image.GetHeight();
339 const unsigned int w = image.GetWidth();
340
341 const unsigned int rDstIndex = GetImageChannelIndex(layout, ImageChannel::R);
342 const unsigned int gDstIndex = GetImageChannelIndex(layout, ImageChannel::G);
343 const unsigned int bDstIndex = GetImageChannelIndex(layout, ImageChannel::B);
344
345 imageData.resize(h * w * 3);
346 unsigned int offset = 0;
347
348 for (unsigned int j = 0; j < h; ++j)
349 {
350 for (unsigned int i = 0; i < w; ++i)
351 {
352 uint8_t r, g, b;
353 std::tie(r, g, b) = image.GetPixelAs3Channels(i, j);
354
355 imageData[offset+rDstIndex] = float(r) / 255.0f;
356 imageData[offset+gDstIndex] = float(g) / 255.0f;
357 imageData[offset+bDstIndex] = float(b) / 255.0f;
358 offset += 3;
359 }
360 }
361
362 return imageData;
telsoa01c577f2c2018-08-31 09:22:23 +0100363}