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);


    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);

    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));

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

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.

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