April 7, 2024, 10:44 p.m. | /u/Its_NotTom

Computer Vision www.reddit.com

Hey all!

I've been delving into the world of computer vision lately and I'm curious about your insights regarding the performance disparities between traditional Convolutional Neural Network (CNN) architectures and the newer Vision Transformer (VIT) models.

1. What specific performance metrics do you think differentiate CNNs from VITs?
2. In what scenarios do you believe CNNs outperform VITs, and vice versa?
3. Are there any particular applications or tasks where VITs shine compared to CNNs?
4. How do you perceive …

architectures cnn cnns computer computer vision computervision convolutional neural network differences hey insights metrics network neural network performance think thoughts transformer vision vit world

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