/// Copyright (c) 2020 ARM Limited. /// /// SPDX-License-Identifier: MIT /// /// Permission is hereby granted, free of charge, to any person obtaining a copy /// of this software and associated documentation files (the "Software"), to deal /// in the Software without restriction, including without limitation the rights /// to use, copy, modify, merge, publish, distribute, sublicense, and/or sell /// copies of the Software, and to permit persons to whom the Software is /// furnished to do so, subject to the following conditions: /// /// The above copyright notice and this permission notice shall be included in all /// copies or substantial portions of the Software. /// /// THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR /// IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, /// FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE /// AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER /// LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, /// OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE /// SOFTWARE. /// namespace armnn { /** @page other_tools Other Tools @tableofcontents @section S14_image_csv_file_generator The ImageCSVFileGenerator The `ImageCSVFileGenerator` is a program for creating a CSV file that contains a list of .raw tensor files. These .raw tensor files can be generated using the`ImageTensorGenerator`. |Cmd:||| | ---|---|---| | -h | --help | Display help messages | | -i | --indir | Directory that .raw files are stored in | | -o | --outfile | Output CSV file path | Example usage:
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~.sh ./ImageCSVFileGenerator -i /path/to/directory/ -o /output/path/csvfile.csv ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~



@section S15_image_tensor_generator The ImageTensorGenerator The `ImageTensorGenerator` is a program for pre-processing a .jpg image before generating a .raw tensor file from it. Build option: To build ModelAccuracyTool, pass the following options to Cmake: * -DBUILD_ARMNN_QUANTIZER=1 |Cmd:||| | ---|---|---| | -h | --help | Display help messages | | -f | --model-format | Format of the intended model file that uses the images.Different formats have different image normalization styles.Accepted values (caffe, tensorflow, tflite) | | -i | --infile | Input image file to generate tensor from | | -o | --outfile | Output raw tensor file path | | -z | --output-type | The data type of the output tensors.If unset, defaults to "float" for all defined inputs. Accepted values (float, int or qasymm8) | | --new-width |Resize image to new width. Keep original width if unspecified | | | --new-height | Resize image to new height. Keep original height if unspecified | | -l | --layout | Output data layout, "NHWC" or "NCHW". Default value: NHWC | Example usage:
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~.sh .sh ./ImageTensorGenerator -i /path/to/image/dog.jpg -o /output/path/dog.raw --new-width 224 --new-height 224 ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~



@section S16_model_accuracy_tool_armnn The ModelAccuracyTool-ArmNN The `ModelAccuracyTool-Armnn` is a program for measuring the Top 5 accuracy results of a model against an image dataset. Prerequisites: 1. The model is in .armnn format model file. The `ArmnnConverter` can be used to convert a model to this format. Build option: To build ModelAccuracyTool, pass the following options to Cmake: * -DFLATC_DIR=/path/to/flatbuffers/x86build/ * -DBUILD_ACCURACY_TOOL=1 * -DBUILD_ARMNN_SERIALIZER=1 |Cmd:||| | ---|---|---| | -h | --help | Display help messages | | -m | --model-path | Path to armnn format model file | | -f | --model-format | The model format. Supported values: caffe, tensorflow, tflite | | -i | --input-name | Identifier of the input tensors in the network separated by comma | | -o | --output-name | Identifier of the output tensors in the network separated by comma | | -d | --data-dir | Path to directory containing the ImageNet test data | | -p | --model-output-labels | Path to model output labels file. | -v | --validation-labels-path | Path to ImageNet Validation Label file | -l | --data-layout ] | Data layout. Supported value: NHWC, NCHW. Default: NHWC | -c | --compute | Which device to run layers on by default. Possible choices: CpuRef, CpuAcc, GpuAcc. Default: CpuAcc, CpuRef | | -r | --validation-range | The range of the images to be evaluated. Specified in the form :. The index starts at 1 and the range is inclusive. By default the evaluation will be performed on all images. | | -b | --blacklist-path | Path to a blacklist file where each line denotes the index of an image to be excluded from evaluation. | Example usage:
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~.sh ./ModelAccuracyTool -m /path/to/model/model.armnn -f tflite -i input -o output -d /path/to/test/directory/ -p /path/to/model-output-labels -v /path/to/file/val.txt -c CpuRef -r 1:100 ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~

**/ }