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Segmentation Models  documentation - Home Segmentation Models  documentation - Home

Contents:

  • ⚙️ Installation
  • 🚀 Quick Start
  • 🕸️ Segmentation Models
  • 🔍 Available Encoders
  • 🎯 Timm Encoders
  • 📉 Losses
  • 📏 Metrics
  • 📂 Saving and Loading
  • 💡 Insights
  • .rst

Welcome to Segmentation Models’s documentation!

Contents

  • Welcome to Segmentation Models’s documentation!
  • Indices and tables

Welcome to Segmentation Models’s documentation!#

Contents:

  • ⚙️ Installation
  • 🚀 Quick Start
  • 🕸️ Segmentation Models
    • Unet
    • Unet++
    • FPN
    • PSPNet
    • DeepLabV3
    • DeepLabV3+
    • Linknet
    • MAnet
    • PAN
    • UPerNet
    • Segformer
    • DPT
  • 🔍 Available Encoders
    • Choosing the Right Encoder
  • 🎯 Timm Encoders
    • Traditional-Style
    • Transformer-Style
  • 📉 Losses
    • Constants
    • JaccardLoss
    • DiceLoss
    • TverskyLoss
    • FocalLoss
    • LovaszLoss
    • SoftBCEWithLogitsLoss
    • SoftCrossEntropyLoss
    • MCCLoss
  • 📏 Metrics
    • Functional metrics
  • 📂 Saving and Loading
    • Saving and Sharing a Model
    • Loading Trained Model
    • Saving model Metrics and Dataset Name
    • Saving with preprocessing transform (Albumentations)
    • Conclusion
  • 💡 Insights
    • 1. Models architecture
    • 2. Creating your own encoder
    • 3. Aux classification output
    • 4. Freezing and unfreezing the encoder

Indices and tables#

  • Index

  • Module Index

  • Search Page

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⚙️ Installation

Contents
  • Welcome to Segmentation Models’s documentation!
  • Indices and tables

By Pavel Iakubovskii

© Copyright 2026, Pavel Iakubovskii.