I want to make a dynamic loss function in tensorflow. I want to calculate the energy of a signal's FFT, more specifically only a window of size 3 around the most dominant peak. I am unable to implement in TF, as it throws a lot of errors like
InvalidArgumentError (see above for traceback): Expected begin, end, and strides to be 1D equal size tensors, but got shapes [1,64], [1,64], and  instead.
My code is this:
self.spec = tf.fft(self.signal) self.spec_mag = tf.complex_abs(self.spec[:,1:33]) self.argm = tf.cast(tf.argmax(self.spec_mag, 1), dtype=tf.int32) self.frac = tf.reduce_sum(self.spec_mag[self.argm-1:self.argm+2], 1)
Since I am computing batchwise of 64 and dimension of data as 64 too, the shape of
(64,64). I wish to calculate only the AC components of the FFT. As the signal is real valued, only half the spectrum would do the job. Hence, the shape of
The max in this fft is located at
self.argm which has a shape
Now I want to calculate the energy of 3 elements around the max peak via:
However when I run the code and try to obtain the value of
self.frac, I get thrown with multiple errors.