AugeLab Studio Manual
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  • 👋Welcome to AugeLab Studio User Manual
  • 📘Introduction
    • AugeLab Studio
    • Key Features
    • Use Cases
    • System Requirements
  • 🚀Getting Started
    • Signing up
    • Installation
    • First Look
    • Simple Tour
    • Your Very First Project
      • Basics
      • Detection
      • Wrapping Up
    • More Local Examples
    • Further Reading
  • đŸ–Ĩī¸AugeLab Studio Interface
    • Detailed Look
    • Scenario Area
    • Menu and Toolbar
    • Managing Projects
    • Installing AI and much more
      • Leverage AI with Module Downloader
  • 🧱Function Blocks
    • Block Structures
    • Sockets
    • Blocks Column
    • Connections
    • All Function Blocks
      • AI Blocks
        • Face Detection
        • Mask Detection
        • Object Detection - Custom
        • Object Detection
        • Pose Estimation
        • Safety Equipment Detection
        • Social Distance Detector
        • Super Resolution
        • Text Detection
        • OCR
      • CNN Blocks
        • Average Pooling 2D
        • Batch Normalization
        • Choose Folder 2D
        • Compile Model
        • Conv. Sep. Layer 2D
        • Conv. Trans. Layer 2D
        • Convolutional Layer 2D
        • Dropout Layer
        • Flatten Layer 2D
        • Fully Connected
        • Global Average Pooling 2D
        • Global Max Pooling 2D
        • Input Layer 2D
        • Loss CCE
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        • Metrics Accuracy
        • Model EfficientNet
        • Model MobileNet
        • Model ResNet
        • Model VGG
        • Optimizer Adadelta
        • Optimizer Adagrad
        • Optimizer Adam
        • Optimizer Adamax
        • Optimizer FTRL
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        • Optimizer RMSProp
        • Optimizer SGD
        • ReLU Layer
        • Softmax Layer
        • Training Parameters
      • Data/Logic
        • Flow Control
          • Batch Concatenation
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          • HMI Background
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        • logic
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        • Data Operations
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          • Data Type Converter
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        • Signal Operators
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          • Multi Port Switch
          • OFF Delay
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      • Image/Transformations
        • Analysis
          • Color Density Percentage
          • Get Dimension
          • Histogram On Curve
          • Histogram On Line
          • Image Color Match
          • Image Memory
          • Image Resolution and Channel Value
          • Maximum Images
          • Mean Value of Image
          • Measure Position Distance
          • Minimum Images
          • Non-zero of Image
          • Std. of Image
          • Structural Similarity
        • Transformation Filters
          • Auto Alignment
          • Auto Contrast
          • Color Quantizer and Clustering
          • Color Space
          • Contrast-Brightness-Gamma
          • Contrast Optimization
          • Deconvolution
          • Denoising
          • Distance Transformation
          • FloodFill
          • Grab Cut Algorithm
        • Color Filters
          • 2D Filter
          • Apply Mask
          • Bilateral Filter
          • Blur
          • Edge Filter
          • HSV Filter
          • Image Adaptive Threshold
          • Image Threshold
          • Invert Image
          • Morphological Transformations
          • Normalize Image
          • RGB Mask
          • RGB Set
          • Sobel Filter
        • Operations
          • Add Images Weighted
          • Add Images
          • Collage Images
          • Divide Images
          • Flip Image
          • Image AutoRotator
          • Image Concatenate
          • Image Resize
          • Image Resizer
          • Merge Channels
          • Multiply Images
          • Polar Transform
          • Rotate Image Angle
          • Slice Image
          • Split Image
          • Subtract Images
      • Detections/Shapes
        • Detectors
          • Barcode Reader
          • Blob Detector
          • Blur Detector
          • Circle Detector
          • Corner Detector
          • Custom CNN Model
          • Data Matrix Reader
          • Detect Reference
          • Feature Detector
          • Find Object - Multiple Image
          • Find Object
          • Find Reference
          • Harris Corner Filter
          • Line Detector
          • Match Shapes
          • Measure Object Distance
          • Shape Detector
        • Draw
          • Draw Detections
          • Draw Line
          • Draw Point
          • Draw Rectangle
          • Draw Result On Image
          • Write Date On Image
          • Write Text On Image
        • Roi Processing
          • Check Area (Polygon)
          • Check Area
          • Get Pixel Mouse
          • Get Pixel
          • Get ROI
          • Image ROI Center
          • Image ROI Polygon
          • Image ROI Select Multi
          • Image ROI Select
          • Image ROI
          • Perspective Transform
          • Rectangles in Rectangle
        • Shape Analysis
          • Approximate Contour
          • Choose Line
          • Contour to Image
          • Fill Contour
          • Find Contour
          • Hull Convex
          • Minimum Circle
          • Minimum Ellipse
          • Minimum Rectangle
          • Minimum Rotated Rectangle
          • Most Similar Shape
          • Point Polygon Test
      • Input/Output
        • Communication
          • Modbus Connect
          • Modbus Read
          • Modbus Write
          • MQTT Publish
          • MQTT Subscribe
          • OPC UA Client
          • OPC UA Read
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          • REST API - Get
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          • Send Mail
          • Siemens S7 Connect
          • Siemens S7 Read
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        • Data Inputs
          • Date-Time List
          • Date-Time
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          • Keyboard/Barcode Reader
          • Logic Input
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          • Number Range
          • PWM (Pulse Width Modulation)
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          • String Input
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        • Image Inputs
          • Camera IP (ONVIF)
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          • Camera USB External
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          • Camera USB
          • Load Image From Path
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          • Make Image
          • Pixel
          • Video
        • Outputs/Exports
          • CSV Export
          • Cycle Timer
          • File/Folder Operations
          • GPU Statistics
          • Image Logger
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          • Led Output
          • Multi Image Write
          • Output
          • Scope
          • Show Image
          • Stop
  • 📡Devices and Communication
    • Camera Usage
    • Communication Protocols
    • Further Reading
  • 🧩Example Projects
    • Demo Projects
    • Circumference Measurement
    • Object Counting
    • Tile Width Measurement
    • Human Detection
    • Object Detection
  • 🔑Key Features
    • Deploy Custom HMI Applications
    • Annotate Data for Object Detection
    • Train Custom AI Models
      • Choosing the Right Database
      • When to Stop Training
    • Create Plugins
      • Components
      • Coding Reference
    • Share Your Solutions with Community
    • Instal Python Packages
  • 📑FAQ
    • Contact Us
    • FAQ
    • Setting up a full project
  • Additional Resources
    • Training Schedule
    • Training Materials
    • AugeLab Experts
  • Appendix
    • Dictionary
    • References
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  • đŸ“Ĩ Inputs
  • 📤 Outputs
  • đŸ•šī¸ Controls
  • 🎨 Features
  • 📝 Usage Instructions
  • 📊 Evaluation
  • 💡 Tips and Tricks
  • đŸ› ī¸ Troubleshooting

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  1. Function Blocks
  2. All Function Blocks
  3. Image/Transformations
  4. Transformation Filters

Color Quantizer and Clustering

This function block allows users to apply color quantization to an image using the K-means clustering algorithm. It helps in reducing the number of colors in an image to a specified level (K), enhancing the visual representation by clustering similar colors together.

đŸ“Ĩ Inputs

Image Any The input image that you want to apply color quantization to.

📤 Outputs

Image Any The output image after color quantization, where similar colors are grouped together.

Clustered Colors (B,G,R) This output provides the RGB values of the clustered colors found in the processed image, allowing for further reference or analysis.

đŸ•šī¸ Controls

K Coefficient A slider that allows you to adjust the value of K, which determines the number of clusters (or colors) in the quantization process. Moving the slider changes the number of unique colors in the output image.

🎨 Features

Dynamic Color Reduction Users can interactively adjust the K coefficient to see how the color representation changes in real time.

Color Analysis The block provides insight into the dominant colors present in the image after quantization, aiding in color analysis tasks.

📝 Usage Instructions

  1. Connect Input Image: Connect any image to the Image Any input to apply color quantization.

  2. Adjust Color Clusters: Use the K Coefficient slider to specify the number of clusters you want to create. Values typically range from 1 to 8, depending on your needs.

  3. Evaluate: Run the block to see the quantized image and the clustered color values, which will be produced as outputs.

📊 Evaluation

Upon evaluation, this function block processes the input image and produces a quantized version alongside the RGB values of clustered colors, facilitating color reduction and analysis tasks.

💡 Tips and Tricks

Choosing K Effectively

A smaller K value will yield a more abstract image, while a larger K value retains more detail. Experiment with different K values to find the best visual representation for your specific image.

Post-processing

After quantization, consider applying an Image Filter or Auto Contrast to further enhance the visual quality of the quantized image.

Use with Other Blocks

You can link the output of this block to an Image Logger to analyze saved colors or pass the quantized image to other processing blocks like Apply Mask to isolate specific clustered colors.

đŸ› ī¸ Troubleshooting

No Output Image

If you're not seeing any output image, check to ensure that the input image is properly connected and not empty. Invalid or corrupt images can lead to no output being generated.

Unexpected Colors in Output

If the output colors seem unexpected, try adjusting the K coefficient. The clustering algorithm may not yield satisfactory results for certain images if K is not set appropriately.

PreviousAuto ContrastNextColor Space

Last updated 8 months ago

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