Noun as in strong fondness

Word Combinations

Example:The ConvNet architecture needs to be carefully designed to handle complex image data.

Definition:The design and structure of a Convolutional Neural Network, including the types of layers and their arrangement.

From ConvNet architecture

Example:During ConvNet training, the model gradually learns to recognize images better.

Definition:The process of modifying the weights of a Convolutional Neural Network to improve its performance on a specific task.

From ConvNet training

Example:Convolutional layers are responsible for the initial feature extraction process in ConvNets.

Definition:Layers in a Convolutional Neural Network that apply a convolution operation to the input data, typically an image, to extract features.

From Convolutional layers

Example:Fully connected layers are used to make final predictions based on the features learned by the convolutional layers.

Definition:Layers in a Convolutional Neural Network that connect every neuron in one layer to every neuron in another layer, used for classifying the features extracted by the convolutional layers.

From Fully connected layers

Example:Training deep ConvNets for image recognition tasks often requires large datasets.

Definition:Convolutional Neural Networks with multiple layers, capable of learning more complex features from images.

From Deep ConvNets

Example:Sparse ConvNets can be appealing for applications where computational resources are limited.

Definition:Convolutional Neural Networks with fewer layers, using sparse connections to reduce computational costs while still achieving good performance.

From Sparse ConvNets

Example:During the training of ConvNet validation is crucial to prevent the model from learning noise rather than the underlying patterns.

Definition:The process of evaluating the performance of a Convolutional Neural Network on a validation set to ensure it is not overfitting to the training data.

From ConvNet validation

Example:ConvNet inference can be used for real-time object detection in smartcity applications.

Definition:The process of using a trained Convolutional Neural Network to make predictions on new, unseen data.

From ConvNet inference