Data-driven adaptive history for image editing

@inproceedings{Chen2016DatadrivenAH,
  title={Data-driven adaptive history for image editing},
  author={Hsiang-Ting Chen and L. Wei and B. Hartmann and M. Agrawala},
  booktitle={I3D '16},
  year={2016}
}
  • Hsiang-Ting Chen, L. Wei, +1 author M. Agrawala
  • Published in I3D '16 2016
  • Computer Science
  • Digital image editing is usually an iterative process; users repetitively perform short sequences of operations, as well as undo and redo using history navigation tools. In our collected data, undo, redo and navigation constitute about 9 percent of the total commands and consume a significant amount of user time. Unfortunately, such activities also tend to be tedious and frustrating, especially for complex projects. We address this crucial issue by adaptive history, a UI mechanism that groups… CONTINUE READING
    Data-driven Multi-level Segmentation of Image Editing Logs
    Exposure: A White-Box Photo Post-Processing Framework
    • 71
    • Open Access
    Temporal Segmentation of Creative Live Streams
    Autocomplete 3D sculpting
    • 8
    • Open Access

    References

    Publications referenced by this paper.
    SHOWING 1-5 OF 5 REFERENCES
    Selective Undo Support for Painting Applications
    • 18
    • Highly Influential
    • Open Access
    Chronicle: capture, exploration, and playback of document workflow histories
    • 152
    • Highly Influential
    • Open Access
    MeshFlow: interactive visualization of mesh construction sequences
    • 20
    • Highly Influential
    • Open Access
    AdaptableGIMP: designing a socially-adaptable interface
    • 32
    • Highly Influential
    • Open Access
    Adaptablegimp: designing a sociallyadaptable interface
    • 2011