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    Aerial landscape photography - flux-v1.0
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    # Aerial Landscape - Flux Dev LoRA
    
    A LoRA model trained on aerial landscape and overhead shot photography for Flux Dev, specializing in top-down perspectives of natural landscapes, urban environments, and scenic views.
    
    ## 📋 Model Details
    
    - **Base Model**: Flux Dev
    - **Training Type**: LoRA (Low-Rank Adaptation)
    - **Rank**: 64
    - **Training Steps**: 7,500
    - **Training Resolution**: 1024×1024
    - **Dataset Size**: 531 images
    - **Hardware**: NVIDIA A40 GPU (48GB VRAM)
    
    ## 🎨 Model Capabilities
    
    This LoRA specializes in generating:
    
    - **Aerial landscapes**: Ocean views, beaches, forests, mountains, and natural terrain from above
    - **Urban aerial photography**: Cities, buildings, roads, and infrastructure from bird's-eye view
    - **Overhead perspectives**: Top-down shots with authentic aerial photography composition
    - **Natural scenery**: Water bodies, waves, coastlines, rock formations, vegetation
    - **Architectural views**: Buildings and urban structures from elevated angles
    
    ### Common Themes
    - 80% no_humans scenes (pristine landscape focus)
    - Natural elements: water (46%), ocean/beach (29%), trees/nature (23%)
    - Urban elements: buildings (17%), roads, vehicles
    - Artistic styles: traditional media aesthetics, painting-like qualities
    
    ## 🚀 Usage
    
    ### Basic Prompt Structure
    
    ```
    [subject], aerial view, overhead shot, from above, [environment details], [style modifiers]
    ```
    
    ### Example Prompts
    
    **Natural Landscapes:**
    ```
    ocean waves, aerial view, from above, no humans, water, scenery, realistic photography
    ```
    
    **Urban Scenes:**
    ```
    city street, aerial view, from above, buildings, roads, motor vehicles, urban landscape, no humans
    ```
    
    **Coastal Views:**
    ```
    beach coastline, overhead shot, from above, ocean, waves, sand, rocks, no humans, natural scenery
    ```
    
    **Forest/Nature:**
    ```
    dense forest, aerial photography, from above, trees, nature, greenery, no humans, scenic landscape
    ```
    
    ### Recommended Settings
    
    - **LoRA Weight**: 0.6 - 1.0 (adjust based on desired strength)
    - **CFG Scale**: 3.5 - 7.0
    - **Steps**: 20-30 (Flux Dev standard)
    - **Sampler**: Euler, DPM++ 2M, or other Flux-compatible samplers
    - **Resolution**: 1024×1024 or higher (model trained at 1024px)
    
    ### Key Trigger Words
    
    | Category        | Keywords                                                             |
    | --------------- | -------------------------------------------------------------------- |
    | **Perspective** | `from_above`, `aerial view`, `overhead shot`, `bird's eye view`      |
    | **Environment** | `scenery`, `outdoors`, `nature`, `urban`, `landscape`                |
    | **Natural**     | `ocean`, `water`, `waves`, `beach`, `tree`, `forest`, `rock`         |
    | **Urban**       | `building`, `city`, `road`, `street`, `architecture`                 |
    | **Composition** | `no_humans`, `vehicle_focus`, `watercraft`                           |
    | **Style**       | `realistic`, `photography`, `traditional_media`, `painting_(medium)` |
    
    ## 💡 Tips for Best Results
    
    1. **Use "from_above" or "aerial view"** to activate the overhead perspective style
    2. **Add "no_humans"** for pure landscape shots (primary training focus)
    3. **Combine natural + urban elements** for interesting mixed scenes
    4. **Adjust LoRA strength**:
       - 0.6-0.8 for subtle aerial influence
       - 0.8-1.0 for strong aerial photography style
    5. **Resolution**: Works best at 1024×1024 or higher aspect ratios
    6. **Negative prompts**: `ground level, eye level, portrait, close-up` to avoid non-aerial perspectives
    
    ## 📊 Training Dataset Statistics
    
    - **Total images**: 531 aerial/overhead photographs
    - **Resolution**: 1024×1024 (square format)
    - **Content distribution**:
      - Landscapes/nature: ~70%
      - Urban/architecture: ~20%
      - Mixed/other: ~10%
    - **Caption format**: Booru-style tags with detailed scene descriptions
    
    ### Most Common Tags
    ```
    no_humans (428), traditional_media (369), scenery (312), outdoors (286),
    water (244), painting_(medium) (178), ocean (102), waves (94),
    from_above (92), building (92), sky (87), tree (120), beach (50)
    ```
    
    ## 🖼️ Sample Images
    
    Sample training images are available in the `1024/` directory, showcasing the variety of aerial perspectives, natural landscapes, and urban scenes used to train this model.
    
    ## 📝 Technical Specifications
    
    - **Training Framework**: Likely Kohya/SimpleTuner/AI-Toolkit
    - **Optimizer**: AdamW or similar
    - **Precision**: Mixed precision (FP16/BF16)
    - **Batch Size**: Optimized for 48GB VRAM
    - **Learning Rate**: Default LoRA learning rate schedule
    - **Rank**: 64 (balanced between quality and file size)
    
    ## 🔧 Integration
    
    ### ComfyUI
    1. Place the `.safetensors` file in `ComfyUI/models/loras/`
    2. Add LoRA Loader node
    3. Connect to your Flux Dev workflow
    4. Set weight between 0.6-1.0
    
    ### Automatic1111/Forge (with Flux support)
    1. Place in `models/Lora/` directory
    2. Use `<lora:aerial-landscape:0.8>` in prompts
    3. Adjust weight as needed
    
    ### Python (diffusers)
    ```python
    from diffusers import FluxPipeline
    
    pipe = FluxPipeline.from_pretrained("black-forest-labs/FLUX.1-dev")
    pipe.load_lora_weights("path/to/aerial-landscape.safetensors")
    ```
    
    ## 📄 License
    
    Please respect the licensing terms of the base Flux Dev model and any applicable dataset licenses.
    
    ## 🙏 Acknowledgments
    
    - Base Model: [Flux Dev by Black Forest Labs](https://blackforestlabs.ai/)
    - Training Hardware: NVIDIA A40 (48GB)
    - Dataset: 531 curated aerial landscape photographs
    
    ## 📧 Contact & Updates
    
    For questions, improvements, or dataset inquiries, please refer to the model repository or contact the creator.
    
    ---
    
    **Version**: 1.0
    **Release Date**: 2025
    **Training Steps**: 7,500
    **Model Type**: Flux Dev LoRA (Rank 64)
    

    Description

    A LoRA model trained on aerial landscape and overhead shot photography for Flux Dev, specializing in top-down perspectives of natural landscapes, urban environments, and scenic views.
    
    ## 📋 Model Details
    
    - **Base Model**: Flux Dev
    - **Training Type**: LoRA (Low-Rank Adaptation)
    - **Rank**: 64
    - **Training Steps**: 7,500
    - **Training Resolution**: 1024×1024
    - **Dataset Size**: 531 images
    - **Hardware**: NVIDIA A40 GPU (48GB VRAM)
    
    ## 🎨 Model Capabilities
    
    This LoRA specializes in generating:
    
    - **Aerial landscapes**: Ocean views, beaches, forests, mountains, and natural terrain from above
    - **Urban aerial photography**: Cities, buildings, roads, and infrastructure from bird's-eye view
    - **Overhead perspectives**: Top-down shots with authentic aerial photography composition
    - **Natural scenery**: Water bodies, waves, coastlines, rock formations, vegetation
    - **Architectural views**: Buildings and urban structures from elevated angles
    
    
    LORA
    Flux.1 D

    Details

    Downloads
    82
    Platform
    CivitAI
    Platform Status
    Available
    Created
    10/14/2025
    Updated
    5/3/2026
    Deleted
    -

    Files

    aerial-landsacape-flux-v1-rank64-bf16.safetensors