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Mobilenet V1 1.0 224

Developed by google
MobileNet V1 is a lightweight convolutional neural network designed for mobile and embedded vision applications, pre-trained on the ImageNet-1k dataset.
Downloads 5,344
Release Time : 11/10/2022

Model Overview

MobileNet V1 is an efficient convolutional neural network model optimized for image classification tasks on mobile devices. It significantly reduces computational load and parameter count through depthwise separable convolutions while maintaining good classification accuracy.

Model Features

Lightweight and Efficient
Uses depthwise separable convolution design to significantly reduce computational load and parameter count, suitable for mobile device deployment.
Low Latency
Optimized network structure enables fast inference to meet real-time requirements.
Low Power Consumption
Low computational complexity makes it suitable for resource-constrained embedded devices.

Model Capabilities

Image Classification
Object Recognition
Visual Feature Extraction

Use Cases

Mobile Vision Applications
Mobile Device Image Classification
Enables real-time image classification on smartphones and other mobile devices.
Achieves efficient classification on resource-constrained devices.
Embedded Vision Systems
Used for visual recognition in IoT devices or embedded systems.
Operates with low power consumption, suitable for edge computing scenarios.
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