- Practical Convolutional Neural Networks
- Mohit Sewak Md. Rezaul Karim Pradeep Pujari
- 111字
- 2021-06-24 18:58:54
Input layer
The input layer holds the image data. In the following figure, the input layer consists of three inputs. In a fully connected layer, the neurons between two adjacent layers are fully connected pairwise but do not share any connection within a layer. In other words, the neurons in this layer have full connections to all activations in the previous layer. Therefore, their activations can be computed with a simple matrix multiplication, optionally adding a bias term. The difference between a fully connected and convolutional layer is that neurons in a convolutional layer are connected to a local region in the input, and that they also share parameters:
![](https://epubservercos.yuewen.com/9DA8BB/19470397108904606/epubprivate/OEBPS/Images/d65ee007-a008-4252-88b6-f4ac9d2d13d2.png?sign=1739658099-CJ1eIPlN75WCX4e2fNHgcZPKOJLaVukZ-0-86caed876affa76162d1db90d0ed94aa)