I want to create a convolutional neural network in tensorflow which takes images as as inputs to the first convolution layers and propagates the data from them through the net. At the point where the last pooling layer ist flattened, I want to either add some additional input there or directly to the fully-connected layer.
Note: For each input image of the training data exists a additional set of numerical values which are unique to the image.
Could someone provide some information on how to implement this in tensorflow, please?