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Jeffrey Heer · 14 May 2009

Input Techniques. Jeffrey Heer · 14 May 2009. W. D. Pointing Device Evaluation. Experimental task: target acquisition abstract, elementary. Real task: interacting with GUIs pointing is fundamental. Index of Difficulty ( ID ). Fitts’ Law [Paul Fitts, 1954]. MT = a + b log 2 (D/W + 1).

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Jeffrey Heer · 14 May 2009

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  1. Input Techniques Jeffrey Heer · 14 May 2009

  2. W D Pointing Device Evaluation • Experimental task: target acquisition • abstract, elementary Real task: interacting with GUIs • pointing is fundamental

  3. Index of Difficulty (ID ) Fitts’ Law[Paul Fitts, 1954] MT = a + b log2 (D/W + 1) Models well-rehearsed selection task MT increases as the distance to the target increases MT decreases as the size of the target increases a, b = constants (empirically derived) D = distance W = size Index of Performance (IP ) = 1/b (bits/s)

  4. Experimental Data

  5. Considers Distance and Target Size MT = a + b log2 (D/W + 1) Target 1 Target 2 Same ID → Same Difficulty

  6. Target 1 Target 2 Considers Distance and Target Size MT = a + b log2 (D/W + 1) Smaller ID → Easier

  7. Target 1 Considers Distance and Target Size MT = a + b log2 (D/W + 1) Target 2 Larger ID → Harder

  8. What does Fitts’ law really model? Target Width Velocity (c) (a) (b) Distance

  9. Comparing device performance Reference: MacKenzie, I. Fitts’ Law as a research and design tool in human computer interaction. Human Computer Interaction, 1992, vol. 7, pp. 91-139 Device Study IP (bits/s) Hand Fitts (1954) 10.6 Mouse Card, English, & Burr (1978) 10.4 Joystick Card, English, & Burr (1978) 5.0 Trackball Epps (1986) 2.9 Touchpad Epps (1986) 1.6 Eyetracker Ware & Mikaelian (1987) 13.7

  10. Pop-up Linear Menu Pop-up Pie Menu Today Sunday Monday Tuesday Wednesday Thursday Friday Saturday Using laws to predict performance Which will be faster on average? • Pie menu (bigger targets & less distance)?

  11. Index of Difficulty (ID ) Fitts’ Law[Paul Fitts, 1954] MT = a + b log2 (D/W + 1) Models well-rehearsed selection task MT increases as the distance to the target increases MT decreases as the size of the target increases a, b = constants (empirically derived) D = distance W = size Index of Performance (IP ) = 1/b (bits/s)

  12. Beyond pointing: trajectories Steering Law Accot & Zhai

  13. EdgeWrite Corner-based text input Uses physical constraints Hard edges and corners Can help offset motor impairments

  14. Crossing UIs [Apitz & Guimbretière 04]

  15. Yves Guiard: Kinematic Chain Asymmetry in bimanual activities “Under standard conditions, the spontaneous writing speed of adults is reduced by some 20% when instructions prevent the non-preferred hand from manipulating the page” Non-dominant hand (NDH) provides a frame of reference for the dominant hand (DH) NDH operates at a coarse temporal and spatial scale; DH operates at a finer scales

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