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Embedar

Embedar is an interactive visual analytics tool designed to help users explore, compare, and analyze model embedding space in guidance systems. The tool integrates three interconnected core components: (A) Model Embedding Space Overview, offering interactive scatter plots and statistical insights for an in-depth understanding of model behavior; (B) Key Frame View, which connects abstract data representations with concrete actions and objects in the physical environment for deeper exploration; and (C) Event Timeline View, which aligns multiple time series (steps and average confidence of detected objects) collected during performer sessions along a shared time axis, enabling comparison across sessions and exploration by brushing to update linked views. System screen

Install

npm install
npx webpack
python -m http.server

Data Setup

To set up the required data for Embedar, follow these steps:

  1. Unzip the data.zip file in the same directory where it is located.

  2. Within the unzipped data folder, create a new folder named medoid_frame.

  3. Inside the medoid_frame folder, organize the images (frames) according to each session in the BBN dataset. If you don't have access to the sessions' frames, please contact [email protected] to obtain a copy of this.

    The folder structure within the medoid_frame folder should be organized as follows:

     ├── ...
     ├──data                   
     │  ├── medoid_frame        # Folder containing all images                
     |  |  ├── [skill_ID]   
     |  |  |  |  ├── A8-1_w1_f1.jpg
     |  |  |  |  ...   
     └────────────────────────────────────────────────────────────────────────────