Change Detection Models for National Infrastructure Monitoring

This repository contains a collection of Fine-tuned change detection models developed by Team-1 from San Jose State University as part of the National Infrastructure Monitoring project.

Models and Contributors

Our team has implemented several state-of-the-art change detection models:

  1. ChangeViT: Built by Nihar

    • Combines Vision Transformer (ViT) and CNN architectures
    • Excels at detecting both large-scale and fine-grained changes
    • Nihar's LinkedIn
  2. BITCD: Developed by Charishma

    • Uses a transformer-based approach for advanced change detection
    • Processes images as compact token sets for improved efficiency
    • Charishma's LinkedIn
  3. ChangeFormer: Implemented by Keerthana

    • Transformer-based architecture for satellite imagery change detection
    • Captures long-range spatial and temporal dependencies
    • Keerthana's LinkedIn
  4. Multi-Modal Adaptation Network: Content generation by Anbu

    • Combines optical and SAR imagery for robust change detection
    • Utilizes domain adaptation to align features from different image types
    • Anbu's LinkedIn
  5. Siamese Nested UNet: Developed by Harika

    • Combines Siamese network and U-Net architectures
    • Excels at image comparison tasks for change detection
    • Harika's LinkedIn

Key Features

  • Advanced change detection capabilities for high-resolution satellite imagery
  • Utilization of transformer-based approaches for capturing long-range relationships
  • Efficient processing of large-scale datasets
  • Combination of multiple imaging modalities for improved accuracy
  • Scalability to handle various image sizes and resolutions

These models represent cutting-edge approaches in remote sensing and change detection, specifically tailored for national infrastructure monitoring applications.

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