Explore Image Processing, Deep Learning, Object Detection and More!
Description
Unlock the world of computer vision with our comprehensive course titled “Master Computer Vision: 1300+ Interview Questions & Practice.” This meticulously crafted program offers over 1300 practice questions that span all levels of difficulty—beginner, intermediate, and advanced—across critical categories such as image processing fundamentals, deep learning techniques, object detection methods, and more.
Throughout this course, you will engage with topics including convolutional neural networks (CNNs), image segmentation strategies, real-time vision systems, and generative models like GANs. Each section is designed not only to test your knowledge but also to deepen your understanding through practical applications and real-world scenarios.
By completing this course, you will gain confidence in your ability to tackle complex computer vision problems and prepare effectively for technical interviews. Whether you are aiming for a career in artificial intelligence or simply wish to enhance your skill set, our course provides the resources you need to succeed.
These practice tests cover:
1. Fundamentals of Image Processing
Image representation (pixels, RGB, grayscale)
Filters (blur, sharpening, edge detection)
Histogram and contrast adjustments
Thresholding (binary, Otsu’s method)
Morphological operations (erosion, dilation, opening, closing)
2. Computer Vision Basics
Convolutional filters and kernels
Image transformations (rotation, translation, scaling)
Interpolation techniques (bilinear, bicubic)
Color spaces (RGB, HSV, Lab, etc.)
Contours and shape detection
Hough Transform (line and circle detection)
Feature extraction (SIFT, SURF, ORB)
3. Deep Learning for Computer Vision
Convolutional Neural Networks (CNNs)
Architecture (Conv layers, Pooling, Activation functions)
Famous CNN architectures (AlexNet, VGG, ResNet, etc.)
Backpropagation and optimization techniques (Gradient Descent, Adam)
Transfer Learning
Fine-tuning pre-trained models
Activation functions (ReLU, Leaky ReLU, Softmax)
Loss functions (Cross-Entropy, MSE)
Batch Normalization and Dropout
4. Object Detection and Localization
Sliding Window Technique
Region-based CNNs (R-CNN, Fast R-CNN, Faster R-CNN)
YOLO (You Only Look Once)
SSD (Single Shot MultiBox Detector)
Anchor Boxes, Intersection over Union (IoU)
Non-Max Suppression (NMS)
5. Image Segmentation
Threshold-based segmentation
Watershed Algorithm
Edge detection-based segmentation
Region Growing
Deep learning-based segmentation (Fully Convolutional Networks, U-Net, Mask R-CNN)
Semantic Segmentation vs Instance Segmentation
6. Optical Flow and Motion Analysis
Optical flow algorithms (Lucas-Kanade, Farneback)
Background subtraction
Tracking algorithms (Kalman Filter, Mean-Shift, CAMShift)
Object tracking with Deep Learning (Siamese Networks, DeepSORT)
7. 3D Computer Vision
Depth Estimation (Stereo Vision, Structured Light)
Epipolar Geometry (Fundamental Matrix, Essential Matrix)
Camera Calibration
3D Reconstruction (Structure from Motion, Multiview Stereo)
Point Clouds, 3D meshes
LiDAR data processing
8. Face Detection, Recognition, and Pose Estimation
Viola-Jones algorithm for face detection
Haar cascades and HOG (Histogram of Oriented Gradients)
Deep Learning-based face detection (MTCNN, SSD for faces)
Facial landmark detection
Face Recognition techniques (Eigenfaces, Fisherfaces, LBPH)
Deep learning-based face recognition (FaceNet, VGGFace)
Pose Estimation (OpenPose, PnP problem)
9. Generative Models and Image Synthesis
Autoencoders and Variational Autoencoders (VAE)
Generative Adversarial Networks (GANs)
DCGAN, CycleGAN, StyleGAN
Super-resolution techniques
Image-to-image translation
10. Time-Series in Computer Vision (Video Analysis)
Action recognition
Video frame segmentation
Video classification (CNN + LSTM architecture)
Temporal Convolutional Networks (TCN)
Spatio-temporal feature extraction
11. Optimization Techniques
Hyperparameter tuning (learning rate, momentum)
Techniques to avoid overfitting (Dropout, Data Augmentation)
Early stopping, learning rate schedules
Model quantization and pruning for efficiency
12. Edge AI and Embedded Vision
Running vision models on embedded systems (NVIDIA Jetson, Raspberry Pi)
Model compression (Quantization, Pruning)
ONNX and TensorRT optimizations
Efficient architectures (MobileNet, SqueezeNet, ShuffleNet)
13. Image Annotation Tools and Data Preparation
Manual annotation vs automatic annotation
Tools like LabelImg, CVAT
Data preprocessing (augmentation, normalization)
Synthetic data generation
14. Popular Computer Vision Libraries
OpenCV (image processing, object detection)
Dlib (face detection, object tracking)
TensorFlow/Keras (deep learning)
PyTorch (deep learning)
Scikit-image (image processing)
15. Real-Time Vision Systems
Real-time object detection
Frame rate optimization
Video stream processing (OpenCV, GStreamer)
GPU vs CPU processing for real-time applications
16. Model Evaluation Metrics
Precision, Recall, F1-score
Accuracy, Confusion Matrix
Intersection over Union (IoU) for object detection
Mean Average Precision (mAP)
Pixel Accuracy and Mean IoU for segmentation
Receiver Operating Characteristic (ROC) Curve, AUC
17. Explainability and Interpretability
Visualizing CNN layers and filters
Grad-CAM, Layer-wise Relevance Propagation (LRP)
SHAP, LIME for interpretability in vision models
Bias and fairness in computer vision models
Join us on this exciting journey into the realm of computer vision! With lifetime access to updated materials and a supportive community of learners, you will be well-equipped to take on challenges in this dynamic field. Enroll now and start transforming your understanding of computer vision today!
Embrace the challenge—your journey into the fascinating world of computer vision begins here!
Total Students | 13 |
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Original Price($) | |
Sale Price | Free |
Number of lectures | 0 |
Number of quizzes | 6 |
Total Reviews | 0 |
Global Rating | 0 |
Instructor Name | FuturePrepSkills Academy |
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