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stanford hci group / cs147 http://cs147.stanford.ed u 02 October 2008 Mobile Scott Klemmer tas: Amal dar Aziz, Mike Krieger, Ranjitha Kumar, Steve Marmon, Neema Moraveji, Neil Patel
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Sony Walkman
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Car phone
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3.3 billion mobile phones worldwide Source: Informacon (2007)
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Mobile design is evolving rapidly! Source: Apple, Palm NewtonPalm PilotiPhone
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There was the Newton … Source: The Simpsons, Wikipedia Apple Newton MessagePad Newton screen displaying a Note with text, "ink text", a sketch, & vectorized shapes Photograph of screen displaying Checklist, some bullet points checked and/or "collapsed" The Newton OS GUI
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The Newton had problems The Original Apple Newton's handwriting recognition was made light of in The Simpsons episode Lisa on IceThe SimpsonsLisa on Ice “Hey, Take a memo on your Newton” “Beat Up Martin” “Baahh!” Source: The Simpsons, Wikipedia Design Issues Recognition (relied on it too much, didn’t work well enough) Physical size (too big) Connectivity (not much)
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The Palm Pilot improved on them Design Wins Recognition: simple graffiti Physical size: fits in the front pocket Connectivity: easy sync Source: Palm 1000 Retrospective, Palm V, Rob Haitani in Moggridge, Designing Interactions. Ch. 3. From the Desk to the Palm. http://www.designinginteractions.com/interviews/RobHaitani Rob Haitani, Palm OS [Designs] what should be most prominent based on frequency of use, and strives to make the most often used interactions accessible in a single step. HotSyn c Graffi ti Pocket size Palm OS Jeff Hawkins, Palm [What about the Foleo?]
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Prototyping the Palm
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Technology Trends processing
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Technology Trends disk
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Technology Trends bandwidth
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Technology Trends RAM
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Technology Trends Devices on Internet
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Technology Trends Imaging Resolution
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Technology Trends Display Resolution
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Technology Trends Size of pockets
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Technology Trends Unaided human abilities
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What will we do with Mobile? The same applications? Different ones?
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Malaysia
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Grameen Telecom: Village Phone
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What makes mobile design exciting? Many Design Choices Think different from GUI/Web Swiss army vs. dedicated Pen/speech modalities Integrate with other tasks Social apps Always in your pocket
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What makes mobile design difficult? Design constraints Limited attention/Interactions bursty Screen size small Form factor Limited network connectivity Speech / pen / multimodal
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Limited Attention & Input Interaction Minimize keystrokes Provide overview + detail Understandable interface at a glance Design with tasklets Minimum set of functions
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Example approach: Nokia Navi-Key Source: Scott Jenson, The Simplicity Shift. Cambridge University Press, 2002. Reducing number of buttons
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Mobile Input: Lots of Research
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Disambiguation w/ Dictionary Dictionary based (such as T9, PocketPC) e.g., 2-2-5-3 able 2-2-5-3-0 cake 2-2-5-3-N-0 bald 2-2-5-3-N-N-0 calf 2-2-5-3-N-N-N-0 Lots of “N” = Next Source: Microsoft, MacKenzie, I. S., Kober, H., Smith, D., Jones, T., Skepner, E. (2001). LetterWise: Prefix-based disambiguation for mobile text input. Proceedings of the ACM Symposium on User Interface Software and Technology - UIST 2001, pp. 111-120. New York: ACM.
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Disambiguation w/ Predictive Predictive (such as BB SureType, Letterwise) e.g., t-h- e A% i B% o C% u D% … Source: Microsoft, MacKenzie, I. S., Kober, H., Smith, D., Jones, T., Skepner, E. (2001). LetterWise: Prefix-based disambiguation for mobile text input. Proceedings of the ACM Symposium on User Interface Software and Technology - UIST 2001, pp. 111-120. New York: ACM.
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Comparison between Dictionary and Predictive Source: MacKenzie, I. S., Kober, H., Smith, D., Jones, T., Skepner, E. (2001). LetterWise: Prefix-based disambiguation for mobile text input. Proceedings of the ACM Symposium on User Interface Software and Technology - UIST 2001, pp. 111-120. New York: ACM. Figure 11. Comparison of entry rates (wpm) with practice for LetterWise, T9, and Multitap. (Note: LetterWise and Multitap figure are from Figure 6. Simulated T9 figures are from Figure 10 with 0.85 frequency of words in dictionary)
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Case Study: iPhone input Design distinctions Tactile Input Disambiguation of input Animations Multi-touch | Mac OS X | Wireless | Accelerometer | Proximity Sensor Predictive Touch keyboard Internet + Music + Phone Source: Apple
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Typing algorithm Model where a user touched on the screen Model the layout of keys and what keys surround the touch If word not in dictionary (or if an extremely unlikely word), present alternative While user types, dynamically adjust target sizes of keys User can accept by simply tapping ‘Space’
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State of the Art: Shapewriter
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Service Design
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Eye to the Future: Sensor Networks Live Ad Hoc Sensor Network showing Light Intensity A handful of network sensor 'dots' Lots of 'dots' - getting ready for the big demo Source: UC Berkeley Smart Dust Program, Largest Tiny Network Yet, http://webs.cs.berkeley.edu/800demo/
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Eye to the Future: Mobile Everywhere A 2002 study calculated there were around 4.2 million CCTV cameras in the UK - one for every 14 people. "If you go forward 50 years, you are probably talking about one million forms of sensor per person in the UK," he said. This was a conservative estimate, he said. "More aggressive" calculations suggest there could be 20m sensors per person. Source: BBC, “Sensor rise powers life recorders” There could be one million sensors per UK resident by 2057
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Information Appliances Mobile devices with dedicated purpose
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Mike Krieger’s Sections …will be in Gates 100
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Further Reading Studio 7.5, Designing for Small Screens Mizuko Ito, Personal, Portable, Pedestrian Rich Ling, the Mobile Connection Christian Lindholm, Mobile Usability Matt Jones, Mobile Interaction Design
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