faltungsrepräsentationen
Faltungsrepräsentationen, also known as convolutional representations, are a fundamental concept in signal processing and machine learning. They describe how a signal can be reconstructed by combining it with a kernel or filter through a process called convolution. Essentially, a faltungsrepräsentation expresses an output signal as the sum of scaled and shifted versions of an input signal, where the scaling and shifting are determined by the kernel.
In the context of image processing, for example, a convolutional neural network uses faltungsrepräsentationen to learn
The mathematical operation of convolution involves sliding a kernel over an input and computing the dot product