Efficientnet B0
EfficientNet is a mobile-friendly pure convolutional model that uniformly scales depth/width/resolution dimensions via compound coefficients, trained on the ImageNet-1k dataset.
Downloads 17.12k
Release Time : 2/15/2023
Model Overview
EfficientNet is an efficient convolutional neural network designed for image classification tasks, achieving high performance with low computational cost through innovative scaling methods.
Model Features
Compound Scaling Method
Achieves more efficient model optimization by uniformly scaling three dimensions: network depth, width, and resolution
Mobile-Friendly
Designed with a lightweight architecture, particularly suitable for mobile devices and edge computing scenarios
High-Performance Classification
Achieves state-of-the-art accuracy on benchmarks like ImageNet
Model Capabilities
Image Classification
Object Recognition
Visual Feature Extraction
Use Cases
General Image Recognition
Animal Recognition
Identify animal species in images (e.g., tigers, cats)
Can accurately classify 1,000 ImageNet categories
Everyday Object Recognition
Identify household items (e.g., teapots, furniture)
Performs excellently on common objects
Scene Recognition
Architectural Scene Recognition
Identify different types of buildings and scenes (e.g., palaces, streets)
Effectively understands complex scenes
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