Keypoint Visualization¶
Class: KeypointVisualizationBlockV1
Source: inference.core.workflows.core_steps.visualizations.keypoint.v1.KeypointVisualizationBlockV1
Visualize keypoints (landmark points) detected on objects by drawing point markers, connecting edges, or labeled vertices, providing pose estimation visualization for anatomical points, structural landmarks, or object key features.
How This Block Works¶
This block takes an image and keypoint detection predictions and visualizes the detected keypoints using one of three visualization modes. The block:
- Takes an image and keypoint detection predictions as input (predictions must include keypoint coordinates, confidence scores, and class names)
- Extracts keypoint data (coordinates, confidence values, and class names) from the predictions
- Converts the detection data into a KeyPoints format suitable for visualization
- Applies one of three visualization modes based on the annotator_type setting:
- Edge mode: Draws connecting lines (edges) between keypoints using specified edge pairs to show keypoint relationships (e.g., skeleton connections in pose estimation)
- Vertex mode: Draws circular markers at each keypoint location without connections, showing individual keypoint positions
- Vertex label mode: Draws circular markers with text labels identifying each keypoint class name, providing labeled keypoint visualization
- Applies color styling, sizing, and optional text labeling based on the selected parameters
- Returns an annotated image with keypoints visualized according to the selected mode
The block supports three visualization styles to suit different use cases. Edge mode connects related keypoints with lines (useful for pose estimation skeletons or structural relationships), vertex mode shows individual keypoint locations as circular markers, and vertex label mode adds text labels to identify each keypoint type. This visualization is essential for pose estimation workflows, anatomical point detection, or any application where specific landmark points on objects need to be identified and visualized.
Common Use Cases¶
- Human Pose Estimation: Visualize human body keypoints (joints, body parts) for pose estimation, activity recognition, or motion analysis applications where anatomical points need to be displayed with skeleton connections or labeled markers
- Animal Pose Estimation: Display animal keypoints for behavior analysis, veterinary applications, or wildlife monitoring where anatomical landmarks need to be visualized for pose analysis or movement tracking
- Structural Landmark Detection: Visualize keypoints on objects, structures, or machinery for structural analysis, quality control, or measurement workflows where specific landmark points need to be identified and displayed
- Facial Landmark Detection: Display facial keypoints (eye corners, nose tip, mouth corners, etc.) for facial recognition, expression analysis, or face alignment applications where facial features need to be visualized
- Sports and Movement Analysis: Visualize keypoints for sports analysis, biomechanics, or movement studies where body positions, joint angles, or movement patterns need to be analyzed and displayed
- Quality Control and Inspection: Display keypoints for manufacturing, quality assurance, or inspection workflows where specific points on products or components need to be identified, measured, or validated
Connecting to Other Blocks¶
The annotated image from this block can be connected to:
- Keypoint Detection Model blocks to receive keypoint predictions that are visualized with point markers, edges, or labeled vertices
- Other visualization blocks (e.g., Bounding Box Visualization, Label Visualization, Polygon Visualization) to combine keypoint visualization with additional annotations for comprehensive pose or structure visualization
- Data storage blocks (e.g., Local File Sink, CSV Formatter, Roboflow Dataset Upload) to save images with keypoint visualizations for documentation, reporting, or analysis
- Webhook blocks to send visualized results with keypoints to external systems, APIs, or web applications for display in dashboards, pose analysis tools, or monitoring interfaces
- Notification blocks (e.g., Email Notification, Slack Notification) to send annotated images with keypoints as visual evidence in alerts or reports
- Video output blocks to create annotated video streams or recordings with keypoint visualizations for live pose estimation, movement analysis, or post-processing workflows
Type identifier¶
Use the following identifier in step "type" field: roboflow_core/keypoint_visualization@v1to add the block as
as step in your workflow.
Properties¶
| Name | Type | Description | Refs |
|---|---|---|---|
name |
str |
Enter a unique identifier for this step.. | ❌ |
copy_image |
bool |
Enable this option to create a copy of the input image for visualization, preserving the original. Use this when stacking multiple visualizations.. | ✅ |
annotator_type |
str |
Type of keypoint visualization mode. Options: 'edge' (draws connecting lines between keypoints using edge pairs, useful for skeleton/pose visualization), 'vertex' (draws circular markers at keypoint locations without connections), 'vertex_label' (draws circular markers with text labels identifying each keypoint class name).. | ❌ |
color |
str |
Color of the keypoint markers, edges, or labels. Can be specified as a color name (e.g., 'green', 'red', 'blue'), hex color code (e.g., '#A351FB', '#FF0000'), or RGB format. Used for keypoint circles (vertex/vertex_label modes) or edge lines (edge mode).. | ✅ |
text_color |
str |
Color of the text labels displayed on keypoints (vertex_label mode only). Can be specified as a color name (e.g., 'black', 'white'), hex color code, or RGB format. Only applies when annotator_type is 'vertex_label'.. | ✅ |
text_scale |
float |
Scale factor for keypoint label text size (vertex_label mode only). Controls the size of text labels displayed on keypoints. Values greater than 1.0 make text larger, values less than 1.0 make text smaller. Only applies when annotator_type is 'vertex_label'. Typical values range from 0.3 to 1.0.. | ✅ |
text_thickness |
int |
Thickness of the keypoint label text characters in pixels (vertex_label mode only). Controls how bold the text labels appear. Higher values create thicker, bolder text. Only applies when annotator_type is 'vertex_label'. Typical values range from 1 to 3.. | ✅ |
text_padding |
int |
Padding around keypoint label text in pixels (vertex_label mode only). Controls the spacing between the text label and its background border. Higher values create more space around text. Only applies when annotator_type is 'vertex_label'. Typical values range from 5 to 20 pixels.. | ✅ |
thickness |
int |
Thickness of the edge lines connecting keypoints in pixels (edge mode only). Controls how thick the connecting lines between keypoints appear. Higher values create thicker, more visible edges. Only applies when annotator_type is 'edge'. Typical values range from 1 to 5 pixels.. | ✅ |
radius |
int |
Radius of the circular keypoint markers in pixels (vertex and vertex_label modes only). Controls the size of circular markers drawn at keypoint locations. Higher values create larger, more visible markers. Only applies when annotator_type is 'vertex' or 'vertex_label'. Typical values range from 5 to 20 pixels.. | ✅ |
edges |
List[Any] |
Edge connections between keypoints (edge mode only). List of pairs of keypoint indices (e.g., [(0, 1), (1, 2), ...]) defining which keypoints should be connected with lines. For pose estimation, this typically represents skeleton connections (e.g., connecting joints). Only applies when annotator_type is 'edge'. Required for edge visualization.. | ✅ |
The Refs column marks possibility to parametrise the property with dynamic values available
in workflow runtime. See Bindings for more info.
Available Connections¶
Compatible Blocks
Check what blocks you can connect to Keypoint Visualization in version v1.
- inputs:
Clip Comparison,Florence-2 Model,Morphological Transformation,Google Gemini,LMM,Instance Segmentation Model,Polygon Zone Visualization,Motion Detection,Keypoint Visualization,Email Notification,Roboflow Custom Metadata,Camera Focus,Anthropic Claude,Multi-Label Classification Model,Pixel Color Count,Detection Offset,Image Threshold,LMM For Classification,Keypoint Detection Model,Anthropic Claude,Email Notification,Gaze Detection,Reference Path Visualization,Stitch OCR Detections,Camera Focus,Image Slicer,Stability AI Image Generation,Stability AI Outpainting,Stitch Images,Blur Visualization,OpenAI,Roboflow Dataset Upload,Detection Event Log,Depth Estimation,Detections Transformation,Google Gemini,CogVLM,Image Preprocessing,Identify Outliers,JSON Parser,Local File Sink,Image Convert Grayscale,VLM as Detector,Florence-2 Model,Dynamic Crop,Dot Visualization,Triangle Visualization,OCR Model,Cosine Similarity,Crop Visualization,PTZ Tracking (ONVIF).md),Twilio SMS Notification,Perspective Correction,Twilio SMS/MMS Notification,EasyOCR,Detections List Roll-Up,Dimension Collapse,Grid Visualization,Google Gemini,Line Counter,Trace Visualization,QR Code Generator,Pixelate Visualization,Detections Consensus,OpenAI,Camera Calibration,Roboflow Dataset Upload,Webhook Sink,Buffer,Single-Label Classification Model,VLM as Detector,Object Detection Model,Background Subtraction,SIFT Comparison,Bounding Box Visualization,Contrast Equalization,Halo Visualization,Model Comparison Visualization,Label Visualization,Slack Notification,Dynamic Zone,OpenAI,Circle Visualization,Image Contours,Background Color Visualization,Image Blur,Mask Visualization,VLM as Classifier,Size Measurement,Google Vision OCR,Llama 3.2 Vision,Color Visualization,Corner Visualization,Classification Label Visualization,OpenAI,Detections Classes Replacement,Clip Comparison,Template Matching,Line Counter Visualization,Ellipse Visualization,Icon Visualization,Model Monitoring Inference Aggregator,Line Counter,Image Slicer,Absolute Static Crop,VLM as Classifier,Polygon Visualization,SIFT Comparison,Stability AI Inpainting,Keypoint Detection Model,Identify Changes,Distance Measurement,Relative Static Crop,SIFT,CSV Formatter,Detections Filter,Text Display - outputs:
Instance Segmentation Model,Clip Comparison,Florence-2 Model,Morphological Transformation,Google Gemini,LMM,Instance Segmentation Model,Motion Detection,Email Notification,Detections Stitch,Polygon Zone Visualization,Keypoint Visualization,Camera Focus,Anthropic Claude,Multi-Label Classification Model,Pixel Color Count,Image Threshold,LMM For Classification,Keypoint Detection Model,Anthropic Claude,Gaze Detection,Reference Path Visualization,Camera Focus,Stability AI Image Generation,Stitch Images,Stability AI Outpainting,Image Slicer,SmolVLM2,OpenAI,Roboflow Dataset Upload,Depth Estimation,YOLO-World Model,Google Gemini,CogVLM,Image Preprocessing,VLM as Detector,Florence-2 Model,Image Convert Grayscale,SAM 3,Byte Tracker,Dynamic Crop,Time in Zone,Perception Encoder Embedding Model,Moondream2,Triangle Visualization,Dot Visualization,OCR Model,Seg Preview,Crop Visualization,Twilio SMS/MMS Notification,Perspective Correction,EasyOCR,SAM 3,Google Gemini,Object Detection Model,Text Display,Trace Visualization,Pixelate Visualization,OpenAI,CLIP Embedding Model,Camera Calibration,Roboflow Dataset Upload,Buffer,Barcode Detection,Object Detection Model,Single-Label Classification Model,QR Code Detection,VLM as Detector,Background Subtraction,Bounding Box Visualization,Contrast Equalization,Model Comparison Visualization,Halo Visualization,Label Visualization,OpenAI,Circle Visualization,Qwen2.5-VL,Image Contours,Image Blur,Background Color Visualization,Mask Visualization,Dominant Color,VLM as Classifier,Google Vision OCR,Llama 3.2 Vision,Color Visualization,Corner Visualization,Classification Label Visualization,Single-Label Classification Model,OpenAI,Segment Anything 2 Model,Clip Comparison,Template Matching,Line Counter Visualization,Icon Visualization,Ellipse Visualization,Image Slicer,Detections Stabilizer,Absolute Static Crop,VLM as Classifier,Polygon Visualization,SIFT Comparison,Stability AI Inpainting,Qwen3-VL,SAM 3,Keypoint Detection Model,Relative Static Crop,SIFT,Blur Visualization,Multi-Label Classification Model
Input and Output Bindings¶
The available connections depend on its binding kinds. Check what binding kinds
Keypoint Visualization in version v1 has.
Bindings
-
input
image(image): The image to visualize on..copy_image(boolean): Enable this option to create a copy of the input image for visualization, preserving the original. Use this when stacking multiple visualizations..predictions(keypoint_detection_prediction): Keypoint detection predictions containing keypoint coordinates, confidence scores, and class names. Predictions must include keypoints_xy (keypoint coordinates), keypoints_confidence (confidence values), and keypoints_class_name (keypoint class/type names). Requires outputs from a keypoint detection model block..color(string): Color of the keypoint markers, edges, or labels. Can be specified as a color name (e.g., 'green', 'red', 'blue'), hex color code (e.g., '#A351FB', '#FF0000'), or RGB format. Used for keypoint circles (vertex/vertex_label modes) or edge lines (edge mode)..text_color(string): Color of the text labels displayed on keypoints (vertex_label mode only). Can be specified as a color name (e.g., 'black', 'white'), hex color code, or RGB format. Only applies when annotator_type is 'vertex_label'..text_scale(float): Scale factor for keypoint label text size (vertex_label mode only). Controls the size of text labels displayed on keypoints. Values greater than 1.0 make text larger, values less than 1.0 make text smaller. Only applies when annotator_type is 'vertex_label'. Typical values range from 0.3 to 1.0..text_thickness(integer): Thickness of the keypoint label text characters in pixels (vertex_label mode only). Controls how bold the text labels appear. Higher values create thicker, bolder text. Only applies when annotator_type is 'vertex_label'. Typical values range from 1 to 3..text_padding(integer): Padding around keypoint label text in pixels (vertex_label mode only). Controls the spacing between the text label and its background border. Higher values create more space around text. Only applies when annotator_type is 'vertex_label'. Typical values range from 5 to 20 pixels..thickness(integer): Thickness of the edge lines connecting keypoints in pixels (edge mode only). Controls how thick the connecting lines between keypoints appear. Higher values create thicker, more visible edges. Only applies when annotator_type is 'edge'. Typical values range from 1 to 5 pixels..radius(integer): Radius of the circular keypoint markers in pixels (vertex and vertex_label modes only). Controls the size of circular markers drawn at keypoint locations. Higher values create larger, more visible markers. Only applies when annotator_type is 'vertex' or 'vertex_label'. Typical values range from 5 to 20 pixels..edges(list_of_values): Edge connections between keypoints (edge mode only). List of pairs of keypoint indices (e.g., [(0, 1), (1, 2), ...]) defining which keypoints should be connected with lines. For pose estimation, this typically represents skeleton connections (e.g., connecting joints). Only applies when annotator_type is 'edge'. Required for edge visualization..
-
output
image(image): Image in workflows.
Example JSON definition of step Keypoint Visualization in version v1
{
"name": "<your_step_name_here>",
"type": "roboflow_core/keypoint_visualization@v1",
"image": "$inputs.image",
"copy_image": true,
"predictions": "$steps.keypoint_detection_model.predictions",
"annotator_type": "<block_does_not_provide_example>",
"color": "#A351FB",
"text_color": "black",
"text_scale": 0.5,
"text_thickness": 1,
"text_padding": 10,
"thickness": 2,
"radius": 10,
"edges": "$inputs.edges"
}