Resource of free step by step video how to guides to get you started with machine learning.
Friday, April 19, 2024
Deep Learning | Video 3 | Part 2 | Image Processing with CNN | Venkat Reddy AI Classes
Course Materials https://github.com/venkatareddykonasani/Youtube_videos_Material To keep up with the latest updates, join our WhatsApp community: https://chat.whatsapp.com/GidY7xFaFtkJg5OqN2X52k Learn the fundamentals of Convolutional Neural Networks (CNN) and how they revolutionize image processing and recognition. In this video, we delve into the core concepts of CNNs, focusing on filters, kernel matrices, and feature detection. We start by explaining the challenge of image flattening with traditional methods and how CNNs preserve spatial integrity using filters. Filters are matrices applied to images that highlight or suppress specific features. These kernel matrices are crucial for detecting various features like edges, curves, and textures in images. Discover how CNNs automate feature detection by randomly initializing kernel matrices. With sufficient matrices, CNNs uncover hidden features that human eyes might miss, making image recognition more effective. Explore the depth of convolution layers in CNNs, where each layer's depth corresponds to the number of applied kernel matrices. We discuss how multiple filters generate multiple convoluted images, showcasing different highlighted features. Learn the significance of down sampling through pooling layers to reduce redundant information, improving efficiency without sacrificing accuracy. Max pooling and average pooling techniques are demonstrated, illustrating how they reshape and condense image data. This video covers practical considerations like weight reduction and local correlation preservation achieved by CNNs, solving the challenges faced by traditional neural networks. Join us as we simplify complex CNN concepts with practical demonstrations and explanations, making image processing and recognition more accessible. By the end, you'll understand the power of CNNs in transforming raw image data into meaningful visual information. Subscribe for more educational content on machine learning, neural networks, and data science! If you have questions or want to learn more about CNNs, drop a comment below! #CNN #ConvolutionalNeuralNetworks #ImageProcessing #DeepLearning #NeuralNetworks #DataScience #imageprocessing #ai #promptengineering #genai
Subscribe to:
Post Comments (Atom)
-
Using GPUs in TensorFlow, TensorBoard in notebooks, finding new datasets, & more! (#AskTensorFlow) [Collection] In a special live ep...
-
JavaやC++で作成された具体的なルールに従って動く従来のプログラムと違い、機械学習はデータからルール自体を推測するシステムです。機械学習は具体的にどのようなコードで構成されているでしょうか? 機械学習ゼロからヒーローへの第一部ではそのような疑問に応えるため、ガイドのチャー...
-
#deeplearning #noether #symmetries This video includes an interview with first author Ferran Alet! Encoding inductive biases has been a lo...
-
How to Do PS2 Filter (Tiktok PS2 Filter Tutorial), AI tiktok filter Create your own PS2 Filter photos with this simple guide! 🎮📸 Please...
-
#ai #attention #transformer #deeplearning Transformers are famous for two things: Their superior performance and their insane requirements...
-
K Nearest Neighbors Application - Practical Machine Learning Tutorial with Python p.14 [Collection] In the last part we introduced Class...
-
Challenge scenario You were recently hired as a Machine Learning Engineer at a startup movie review website. Your manager has tasked you wit...
-
We Talked To Sophia — The AI Robot That Once Said It Would 'Destroy Humans' [Collection] This AI robot once said it wanted to de...
-
Programming R Squared - Practical Machine Learning Tutorial with Python p.11 [Collection] Now that we know what we're looking for, l...
-
RNN Example in Tensorflow - Deep Learning with Neural Networks 11 [Collection] In this deep learning with TensorFlow tutorial, we cover ...
No comments:
Post a Comment