Use Pretrained Semantic Segmentation Models On TensorFlow Hub
📚 Check out our FREE Courses at OpenCV University : https://opencv.org/university/free-courses/ 📚 Blog post Link: https://learnopencv.com/image-segmentation-tensorflow-hub/ In this computer vision tutorial video, we're going to demonstrate how to use pretrained semantic segmentation models that are hosted on TensorFlow hub. ⭐️ Time Stamps:⭐️ 00:00-00:13: Introduction 00:13-00:58: TensorFlow Hub 00:58-02:00: TensorFlow Hub Website 02:00-02:17: Downloading Sample Images 02:17-03:15: Displaying Sample Images 03:15-04:01: Loading Images 04:01-04:29: Mapping 04:29-06:45: Model Inference 06:45-09:05: Tensor to NumPy Array 09:05-13:04: Displaying Sample Images 13:04-13:48: Printing Values 13:48-14:45: Convenience Function 14:45-15:19: Greyscale Version of Segmentation Map 15:19-16:17: Formalize Implementation 16:17-18:54: Run Inference 18:54-20:20: Calling in Run Inference Function 20:20-20:51: Conclusion Resources: 🖥️ On our blog - https://learnopencv.com we also share tutorials and code on topics like Image Processing, Image Classification, Object Detection, Face Detection, Face Recognition, YOLO, Segmentation, Pose Estimation, and many more using OpenCV(Python/C++), PyTorch, and TensorFlow. 🤖 Learn from the experts on AI: Computer Vision and AI Courses YOU have an opportunity to join the over 5300+ (and counting) researchers, engineers, and students who have benefited from these courses and take your knowledge of computer vision, AI, and deep learning to the next level.🤖 https://opencv.org/courses #️⃣ Connect with Us #️⃣ 📝 Linkedin: https://www.linkedin.com/in/satyamallick/ 📱 Twitter: https://twitter.com/LearnOpenCV 🔊 Facebook: https://www.facebook.com/profile.php?id=100064001437329 📸 Instagram: https://www.instagram.com/learnopencv/ 🔗 Reddit: https://www.reddit.com/user/spmallick 🔖Hashtags🔖 #keras #tensorflow #machinelearning #neuralnetwork #objectdetection #deeplearning #computervision #learnopencv #opencv #tutorial #kerastutorial #tensorflowtutorial
Download
0 formatsNo download links available.