A) The use of computer screens to display images. B) The field of study that enables computers to interpret and understand visual information from the real world. C) The process of filtering and enhancing visual images. D) The study of how human vision works.
A) Enhancing image quality and reducing noise for better analysis. B) Blurring images for artistic effect. C) Changing the image dimensions. D) Randomly distorting images.
A) Dividing an image into meaningful regions or objects for analysis. B) Removing colors from an image. C) Combining multiple images into one. D) Creating a mirror image of the original.
A) R-squared B) Mean Squared Error C) F1 Score D) Accuracy
A) Using smaller batch sizes B) Adding more layers to the network C) Dropout regularization D) Increasing the learning rate
A) Transferring gradients during backpropagation. B) Transferring image pixels to a new image. C) Transferring images between different devices. D) Using pre-trained models and fine-tuning for a specific task.
A) Normalizing input values. B) Reducing the spatial dimensions of the input. C) Introducing non-linearity to the network. D) Increasing the number of parameters.
A) ReLU (Rectified Linear Unit) B) Linear C) Sigmoid D) Tanh
A) Creating composite images. B) Summarizing the performance of a classification model using true positive, false positive, true negative, and false negative values. C) Blurring images for privacy protection. D) Converting images to grayscale.
A) Weather dataset B) Spam dataset C) ImageNet D) Song lyrics dataset
A) Applying color filters to images. B) Converting images to black and white. C) Identifying and delineating individual objects within a scene. D) Smoothing pixel intensities.
A) Gaussian blur B) Lucas-Kanade method C) Fourier transform D) Histogram equalization
A) Mapping one image onto another image plane. B) Normalizing image histograms. C) Detecting object edges. D) Blurring image boundaries.
A) Non-local means denoising B) Adding noise to images C) Rotating images D) Increasing image resolution
A) Image segmentation B) Feature extraction C) Object detection D) Image classification
A) Complex Neuron Network B) Controlled Neural Network C) Computerized Neuron Network D) Convolutional Neural Network
A) Pooling layer B) Activation layer C) Convolutional layer D) Fully connected layer
A) Binary Cross-Entropy Loss B) Cross-Entropy Loss C) L1 Loss D) Mean Squared Error
A) AlexNet B) ResNet (Residual Network) C) InceptionNet D) VGGNet
A) Support Vector Machines (SVM) B) Convolutional Neural Networks (CNNs) C) Principal Component Analysis (PCA) D) K-Nearest Neighbors (KNN)
A) Segmentation of Image Features and Textures B) Selective Image Filtering Technique C) Semi-Integrated Face Tracking D) Scale-Invariant Feature Transform
A) Softmax B) Sigmoid C) Tanh D) ReLU
A) Transfer Learning B) Image Cropping C) Noise Injection D) PCA Dimensionality Reduction |