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Top Computer Vision Projects (2023)

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Computer Vision is a field of Artificial Intelligence (AI) that focuses on interpreting and extracting information from images and videos using various techniques. It is an emerging and evolving field within AI. Computer Vision applications have become an integral part of our daily lives, permeating various aspects of our routines. These applications enclose a wide range of domains, including reverse engineering, security inspections, image processing, computer animation, autonomous navigation, and robotics.

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In this article, we will be exploring some of the best Computer Vision projects. These projects range from beginner-level to expert-level, catering to individuals at different skill levels. Each Computer Vision project will provide you with comprehensive guides, source codes, and datasets, enabling you to delve straight into practical implementation and hands-on experience in the field of computer vision.

What is Computer Vision?

Computer vision is a field of study within artificial intelligence (AI) that focuses on enabling computers to Intercept and extract information from images and videos, in a manner similar to human vision. It involves developing algorithms and techniques to extract meaningful information from visual inputs and make sense of the visual world.

Computer Vision Projects

Let’s get started with the list of best Computer Vision projects, from beginners to the advanced level, that can boost your resume and enhance your Computer Vision skills.

  1. Detect the RGB color from a webcam using Python – OpenCV
  2. Face Detection using Python and OpenCV with a webcam
  3. Face and Hand Landmarks Detection using Python – Mediapipe, OpenCV
  4. Real-Time Edge Detection using OpenCV
  5. Implement Canny Edge Detector in Python using OpenCV
  6. Gun Detection using Python-OpenCV
  7. Real-time object color detection using OpenCV
  8. Right and Left Hand Detection Using Python
  9. Age Detection Using Deep Learning in OpenCV
  10. OpenCV – Drowsiness Detection
  11. Build GUI Application Pencil Sketch from Photo in Python
  12. Measure Size of an Object Using Python OpenCV
  13. Brightness Control With Hand Detection using OpenCV in Python
  14. Car driving using hand detection in Python
  15. Contour Detection with Custom Seeds using Python – OpenCV
  16. Find Co-ordinates of Contours using OpenCV | Python
  17. Live Webcam Drawing using OpenCV
  18. Black and white image colorization with OpenCV and Deep Learning
  19. Detect and Recognize Car License Plate from a video in real-time
  20. License Plate Recognition with OpenCV and Tesseract OCR
  21. Handwritten Digit Recognition using Neural Network
  22. Image Classification with Convolutional Neural Networks (CNNs) Using Pytorch
  23. Human Pose Estimation with OpenCVUsing
  24. Age and Gender Prediction from Image Using Pytorch
  25. Face detection using Cascade Classifier using OpenCV-Python
  26. Face recognition using Artificial Intelligence
  27. Face recognition using GUI
  28. FaceMask Detection using TensorFlow in Python
  29. Python OpenCV – Super-resolution with deep learning
  30. Real-Time Road Lane Detection
  31. CIFAR-10 Image Classification in TensorFlow
  32. Dog Breed Classification Using Transfer Learning
  33. Flower Recognition Using Convolutional Neural Network
  34. Emojify using Face Recognition with Machine Learning
  35. Cat & Dog Classification using Convolutional Neural Network in Python
  36. Video Analysis with Convolutional LSTM Networks
  37. Autonomous Driving with Deep Learning
  38. Visual Question Answering with Neural Networks
  39. Scene Recognition with Convolutional Neural Networks
  40. Text Recognition from Image with Convolutional Recurrent Neural Networks
  41. Image Captioning Using Pytorch
  42. Medical Image Analysis Using Deep Learning
  43. Document Layout Analysis with Deep Learning
  44. Deep Learning for Artistic Style Transfer
  45. Landmark Recognition with Deep Neural Networks
  46. Image Restoration with Generative Adversarial Networks
  47. Satellite Image Analysis Using Convolutional Neural Network
  48. Image generation with Convolutional Autoencoders
  49. Lung Cancer Detection using Convolutional Neural Network (CNN) Tensorflow
  50. Lung Cancer Detection Using Transfer Learning
  51. Lung cancer detection using PyTorch
  52. Pneumonia Detection Using Deep Learning
  53. Detecting Covid-19 with Chest X-ray
  54. Skin Cancer Detection Using TensorFlow
  55. Hand Gesture Recognition with Convolutional Neural Networks
  56. Optical Character Recognition Using Pytorch
  57. Video Object Segmentation with Convolutional Networks
  58. Traffic Signs Recognition using CNN and Keras in Python
  59. Vehicle license plate recognition
  60. Image Inpainting with Deep Neural Networks
  61. Image Deblurring with Deep Neural Networks
  62. Object Detection Using YOLO Using Pytorch
  63. Object Detection Using YOLO Using Tensorflow
  64. Object Detection with Faster R-CNN and Mask R-CNN
  65. Image Segmentation with U-Net using Tensorflow
  66. Image Segmentation with SegNet using Tensorflow
  67. Image Segmentation with U-Net using Pytorch
  68. Neural Style Transfer Using Pytorch
  69. Image Synthesis using Generative Adversarial Networks (GANs)
  70. Emotion Recognition through Facial Expressions
  71. Facial expression detection using the Deepface module in Python
  72. Instance segmentation using Pytorch
  73. Semantic segmentation using Pytorch
  74. Face similarity Detection using PyTorch
  75. Age Conversion Using GANs Algorithm
  76. Business Card Recognization Using Deep Learning
  77. Traffic light detection using Deep Learning
  78. People Counting Using Deep Learning
  79. DeepDream using CNNs
  80. Cartoonifying an Image Using Deep Learning
  81. Road Condition Monitoring Project Using Deep Learning
  82. Image colourization using GANs algorithm
  83. Image Classifier using Tensorflow Object Detection API

FAQs on Computer Vision Projects

Q1. How to handle image preprocessing and data augmentation in computer vision projects?

Answer:

Apply techniques such as resizing, normalization, and cropping to preprocess images and use data augmentation methods such as rotation, flipping, and zooming to increase the diversity and size of the training dataset.

Q2. How do you evaluate the performance of a computer vision model?

Answer:

To evaluate the performance of a computer vision model we use confusion metrics like accuracy, precision, recall, and F1 score to assess model performance.

Q3. What are some common challenges in computer vision projects, and how can one approach them?

Answer:

  • Limited or noisy data: Collect more data or use data augmentation techniques to enhance the dataset’s quality and quantity.
  • Overfitting: Use regularization techniques like dropout or weight decay to prevent the model from memorizing the training data.
  • Complex object detection: Employ deep learning models like Faster R-CNN or YOLO for accurate and efficient object detection.

Q4. What are the Skills Required for the Computer Vision Engineer Role?

Answer:

Skills Required to become a successful Computer Vision Engineer is –

  1. Proficiency in programming languages like Python or C++.
  2. Strong knowledge of computer vision algorithms, deep learning, and neural networks.
  3. Familiarity with libraries such as OpenCV, TensorFlow, or PyTorch.
  4. Experience in image processing, feature extraction, and object detection techniques.

Q5. What is the Role of Computer Vision Engineer?

Answer:

Computer Vision Engineer Roles & Responsibilities Include-

  1. Develop and implement computer vision algorithms and models.
  2. Design and optimize systems for image recognition, object detection, or scene understanding.
  3. Collaborate with cross-functional teams to integrate computer vision solutions into real-world applications.
  4. Stay updated with the latest advancements in computer vision research and techniques.
  5. Troubleshoot and debug computer vision systems to ensure optimal performance.

Conclusion

In conclusion, computer vision projects require handling image preprocessing and data augmentation, evaluating model performance, tackling common challenges, possessing essential skills, and fulfilling the role of a computer vision engineer. By leveraging these techniques and expertise, we can unlock the potential of computer vision and create innovative solutions in various domains. Embracing computer vision opens doors to new possibilities and advancements, pushing the boundaries of what machines can perceive and comprehend.



Last Updated : 05 Jun, 2023
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