0

I'm trying to test TensorFlow lite c++ code with TensorflowLite model. Model gets 256*256 array of floats (spectrogram or image) and do some inference on this data. The TF Lite model is designed to solve the problem of classification into 5 classes. It was derived from a conventional TF model by conversion. I use TF Lite 2.0.

Test model

This is my code:

#include <iostream>
#include <cstdio>
#include "../tensorflow/tensorflow/lite/interpreter.h"
#include "../tensorflow/tensorflow/lite/model.h"
#include "../tensorflow/tensorflow/lite/kernels/register.h"
#include "../tensorflow/tensorflow/lite/op_resolver.h"
#include <cstdlib>

int main(int argc, char** argv)
{

    const char* filename = argv[1];

    std::unique_ptr<tflite::FlatBufferModel> model = tflite::FlatBufferModel::BuildFromFile(filename);

    tflite::ops::builtin::BuiltinOpResolver resolver;
    std::unique_ptr<tflite::Interpreter> interpreter;
    tflite::InterpreterBuilder(*model, resolver)(&interpreter);

    interpreter->SetNumThreads(4);
    interpreter->AllocateTensors();

    for(int i = 0; i < 256*256; i++){
    float input = rand() % 10 + rand() % 10;
            interpreter->typed_input_tensor<float>(0)[i] = input;
            //printf("%f ", input);
    }
    //printf("\n");

    interpreter->Invoke();
    int output = interpreter->outputs()[0];

    printf("%d ",  output);

    for(int i = 0; i < 5; i++)
    {
        float output  = interpreter->typed_output_tensor<float>(0)[i];
        printf("%f ", (output));
    }
    printf("\n");
} 

I have some questions:

  • how to organize the input data (how to apply a two-dimensional spectrogram to the input of the model)?

  • how to get the output probability of classes in right way?

  • did I write the right code to test the model?

  • 2
    The question is rather broad (three questions, actually), and not completely clear... Starting with your last question, what do you mean "the right code"? I haven't used tflite, but the code seems reasonable... Is it not working/compiling for you? And the code would depend on the model code anyway. Same for questions 1 and 2, how you provide and receive the the data depends on how the model is written... Or do you have a problem with the C++ API? Please explain clearly what is the specific issue you are facing, or the unexpected output you are obtaining, if any. – jdehesa Oct 21 at 10:33
  • @jdehesa, Hello! Thanks for the comment! My doubts about the following code: I'm not sure I properly load the spectrogram in the model as two-dimensional spectrogram, and the data I load a one-dimensional way, also I'm not sure about the correct output of the model. – V. Gai Oct 21 at 20:02
  • 1
    So, the code seems indeed to be loading 256 x 256 random numbers into the input, through typed_input_tensor, which gives you a pointer to the input tensor data (in row-major order). Then, after running with Invoke, you read and print five values from the output, similarly accessed through typed_output_tensor. It seems correct, as a test... – jdehesa Oct 22 at 13:10
1
+50

Your code looks about right. And since Tensorflow Lite looks at tensors in row-major format, your way of assigning inputs seems reasonable.

You probably don't need this:

int output = interpreter->outputs()[0];

printf("%d ",  output);

Otherwise, things look okay. If you pre-process the input image/spectogram the same way you did during training, you should obtain the outputs you expect.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.