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- ## Demo_image_classification
-
- The following describes how to use the MindSpore Lite C++ APIs (Android JNIs) and MindSpore Lite image classification models to perform on-device inference, classify the content captured by a device camera, and display the most possible classification result on the application's image preview screen.
-
-
- ### 运行依赖
-
- - Android Studio 3.2 or later (Android 4.0 or later is recommended.)
- - Native development kit (NDK) 21.3
- - CMake 3.10.2 [CMake](https://cmake.org/download)
- - Android software development kit (SDK) 26 or later
- - JDK 1.8 or later [JDK]( https://www.oracle.com/downloads/otn-pub/java/JDK/)
-
- ### 构建与运行
-
- 1. Load the sample source code to Android Studio and install the corresponding SDK. (After the SDK version is specified, Android Studio automatically installs the SDK.)
-
- 
-
- Start Android Studio, click `File > Settings > System Settings > Android SDK`, and select the corresponding SDK. As shown in the following figure, select an SDK and click `OK`. Android Studio automatically installs the SDK.
-
- 
-
- (Optional) If an NDK version issue occurs during the installation, manually download the corresponding [NDK version](https://developer.android.com/ndk/downloads) (the version used in the sample code is 21.3). Specify the SDK location in `Android NDK location` of `Project Structure`.
-
- 
-
- 2. Connect to an Android device and runs the image classification application.
-
- Connect to the Android device through a USB cable for debugging. Click `Run 'app'` to run the sample project on your device.
-
- 
-
- For details about how to connect the Android Studio to a device for debugging, see <https://developer.android.com/studio/run/device?hl=zh-cn>.
-
- The mobile phone needs to be turn on "USB debugging mode" before Android Studio can recognize the mobile phone. Huawei mobile phones generally turn on "USB debugging model" in Settings > system and update > developer Options > USB debugging.
-
- 3. 在Android设备上,点击“继续安装”,安装完即可查看到设备摄像头捕获的内容和推理结果。
-
- Continue the installation on the Android device. After the installation is complete, you can view the content captured by a camera and the inference result.
-
- 
-
- ## Detailed Description of the Sample Program
-
- This image classification sample program on the Android device includes a Java layer and a JNI layer. At the Java layer, the Android Camera 2 API is used to enable a camera to obtain image frames and process images. At the JNI layer, the model inference process is completed in [Runtime](https://www.mindspore.cn/lite/tutorial/en/master/use/runtime.html).
-
- ### Sample Program Structure
-
- ```
- app
- │
- ├── src/main
- │ ├── assets # resource files
- | | └── mobilenetv2.ms # model file
- │ |
- │ ├── cpp # main logic encapsulation classes for model loading and prediction
- | | |
- | | ├── MindSporeNetnative.cpp # JNI methods related to MindSpore calling
- │ | └── MindSporeNetnative.h # header file
- │ |
- │ ├── java # application code at the Java layer
- │ │ └── com.huawei.himindsporedemo
- │ │ ├── gallery.classify # implementation related to image processing and MindSpore JNI calling
- │ │ │ └── ...
- │ │ └── widget # implementation related to camera enabling and drawing
- │ │ └── ...
- │ │
- │ ├── res # resource files related to Android
- │ └── AndroidManifest.xml # Android configuration file
- │
- ├── CMakeList.txt # CMake compilation entry file
- │
- ├── build.gradle # Other Android configuration file
- ├── download.gradle # MindSpore version download
- └── ...
- ```
-
- ### Configuring MindSpore Lite Dependencies
-
- When MindSpore C++ APIs are called at the Android JNI layer, related library files are required. You can use MindSpore Lite [source code compilation](https://www.mindspore.cn/lite/tutorial/en/master/build.html) to generate the MindSpore Lite version.
-
- ```
- android{
- defaultConfig{
- externalNativeBuild{
- cmake{
- arguments "-DANDROID_STL=c++_shared"
- }
- }
-
- ndk{
- abiFilters'armeabi-v7a', 'arm64-v8a'
- }
- }
- }
- ```
-
- Create a link to the `.so` library file in the `app/CMakeLists.txt` file:
-
- ```
- # ============== Set MindSpore Dependencies. =============
- include_directories(${CMAKE_SOURCE_DIR}/src/main/cpp)
- include_directories(${CMAKE_SOURCE_DIR}/src/main/cpp/${MINDSPORELITE_VERSION}/third_party/flatbuffers/include)
- include_directories(${CMAKE_SOURCE_DIR}/src/main/cpp/${MINDSPORELITE_VERSION})
- include_directories(${CMAKE_SOURCE_DIR}/src/main/cpp/${MINDSPORELITE_VERSION}/include)
- include_directories(${CMAKE_SOURCE_DIR}/src/main/cpp/${MINDSPORELITE_VERSION}/include/ir/dtype)
- include_directories(${CMAKE_SOURCE_DIR}/src/main/cpp/${MINDSPORELITE_VERSION}/include/schema)
-
- add_library(mindspore-lite SHARED IMPORTED )
- add_library(minddata-lite SHARED IMPORTED )
-
- set_target_properties(mindspore-lite PROPERTIES IMPORTED_LOCATION
- ${CMAKE_SOURCE_DIR}/src/main/cpp/${MINDSPORELITE_VERSION}/lib/libmindspore-lite.so)
- set_target_properties(minddata-lite PROPERTIES IMPORTED_LOCATION
- ${CMAKE_SOURCE_DIR}/src/main/cpp/${MINDSPORELITE_VERSION}/lib/libminddata-lite.so)
- # --------------- MindSpore Lite set End. --------------------
-
- # Link target library.
- target_link_libraries(
- ...
- # --- mindspore ---
- minddata-lite
- mindspore-lite
- ...
- )
- ```
-
- * In this example, the download.gradle File configuration auto download MindSpore Lite version, placed in the 'app / src / main/cpp/mindspore_lite_x.x.x-minddata-arm64-cpu' directory.
-
- Note: if the automatic download fails, please manually download the relevant library files and put them in the corresponding location.
-
- MindSpore Lite version [MindSpore Lite version]( https://download.mindspore.cn/model_zoo/official/lite/lib/mindspore%20version%200.7/libmindspore-lite.so)
-
- ### Downloading and Deploying a Model File
-
- In this example, the download.gradle File configuration auto download `mobilenetv2.ms `and placed in the 'app / libs / arm64-v8a' directory.
-
- Note: if the automatic download fails, please manually download the relevant library files and put them in the corresponding location.
-
- mobilenetv2.ms [mobilenetv2.ms]( https://download.mindspore.cn/model_zoo/official/lite/mobilenetv2_openimage_lite/mobilenetv2.ms)
-
- ### Compiling On-Device Inference Code
-
- Call MindSpore Lite C++ APIs at the JNI layer to implement on-device inference.
-
- The inference code process is as follows. For details about the complete code, see `src/cpp/MindSporeNetnative.cpp`.
-
- 1. Load the MindSpore Lite model file and build the context, session, and computational graph for inference.
-
- - Load a model file. Create and configure the context for model inference.
-
- ```cpp
- // Buffer is the model data passed in by the Java layer
- jlong bufferLen = env->GetDirectBufferCapacity(buffer);
- char *modelBuffer = CreateLocalModelBuffer(env, buffer);
- ```
-
- - Create a session.
-
- ```cpp
- void **labelEnv = new void *;
- MSNetWork *labelNet = new MSNetWork;
- *labelEnv = labelNet;
-
- // Create context.
- mindspore::lite::Context *context = new mindspore::lite::Context;
- context->thread_num_ = num_thread;
-
- // Create the mindspore session.
- labelNet->CreateSessionMS(modelBuffer, bufferLen, "device label", context);
- delete(context);
-
- ```
-
- - Load the model file and build a computational graph for inference.
-
- ```cpp
- void MSNetWork::CreateSessionMS(char* modelBuffer, size_t bufferLen, std::string name, mindspore::lite::Context* ctx)
- {
- CreateSession(modelBuffer, bufferLen, ctx);
- session = mindspore::session::LiteSession::CreateSession(ctx);
- auto model = mindspore::lite::Model::Import(modelBuffer, bufferLen);
- int ret = session->CompileGraph(model);
- }
- ```
-
- 2. Convert the input image into the Tensor format of the MindSpore model.
-
- Convert the image data to be detected into the Tensor format of the MindSpore model.
-
- ```cpp
- // Convert the Bitmap image passed in from the JAVA layer to Mat for OpenCV processing
- BitmapToMat(env, srcBitmap, matImageSrc);
- // Processing such as zooming the picture size.
- matImgPreprocessed = PreProcessImageData(matImageSrc);
-
- ImgDims inputDims;
- inputDims.channel = matImgPreprocessed.channels();
- inputDims.width = matImgPreprocessed.cols;
- inputDims.height = matImgPreprocessed.rows;
- float *dataHWC = new float[inputDims.channel * inputDims.width * inputDims.height]
-
- // Copy the image data to be detected to the dataHWC array.
- // The dataHWC[image_size] array here is the intermediate variable of the input MindSpore model tensor.
- float *ptrTmp = reinterpret_cast<float *>(matImgPreprocessed.data);
- for(int i = 0; i < inputDims.channel * inputDims.width * inputDims.height; i++){
- dataHWC[i] = ptrTmp[i];
- }
-
- // Assign dataHWC[image_size] to the input tensor variable.
- auto msInputs = mSession->GetInputs();
- auto inTensor = msInputs.front();
- memcpy(inTensor->MutableData(), dataHWC,
- inputDims.channel * inputDims.width * inputDims.height * sizeof(float));
- delete[] (dataHWC);
- ```
-
- 3. Perform inference on the input tensor based on the model, obtain the output tensor, and perform post-processing.
-
- - Perform graph execution and on-device inference.
-
- ```cpp
- // After the model and image tensor data is loaded, run inference.
- auto status = mSession->RunGraph();
- ```
-
- - Obtain the output data.
-
- ```cpp
- auto names = mSession->GetOutputTensorNames();
- std::unordered_map<std::string,mindspore::tensor::MSTensor *> msOutputs;
- for (const auto &name : names) {
- auto temp_dat =mSession->GetOutputByTensorName(name);
- msOutputs.insert(std::pair<std::string, mindspore::tensor::MSTensor *> {name, temp_dat});
- }
- std::string retStr = ProcessRunnetResult(msOutputs, ret);
- ```
-
- - Perform post-processing of the output data.
-
- ```cpp
- std::string ProcessRunnetResult(std::unordered_map<std::string,
- mindspore::tensor::MSTensor *> msOutputs, int runnetRet) {
-
- std::unordered_map<std::string, mindspore::tensor::MSTensor *>::iterator iter;
- iter = msOutputs.begin();
-
- // The mobilenetv2.ms model output just one branch.
- auto outputTensor = iter->second;
- int tensorNum = outputTensor->ElementsNum();
- MS_PRINT("Number of tensor elements:%d", tensorNum);
-
- // Get a pointer to the first score.
- float *temp_scores = static_cast<float * >(outputTensor->MutableData());
-
- float scores[RET_CATEGORY_SUM];
- for (int i = 0; i < RET_CATEGORY_SUM; ++i) {
- if (temp_scores[i] > 0.5) {
- MS_PRINT("MindSpore scores[%d] : [%f]", i, temp_scores[i]);
- }
- scores[i] = temp_scores[i];
- }
-
- // Score for each category.
- // Converted to text information that needs to be displayed in the APP.
- std::string categoryScore = "";
- for (int i = 0; i < RET_CATEGORY_SUM; ++i) {
- categoryScore += labels_name_map[i];
- categoryScore += ":";
- std::string score_str = std::to_string(scores[i]);
- categoryScore += score_str;
- categoryScore += ";";
- }
- return categoryScore;
- }
- ```
-
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