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ESA Space App Camp 2016 _Smart Cities_

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Team Isaac Besora Anthony Thomas Stuart Kent Tom Quast Lead Engineer, Alter Sport. @ibesora Mobile Developer, Detroit Labs. @skentphd Founder, Creative Vikings. @t0mnar Developer, Trainline. @3DPrintScanner

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Urban Population: EU 75% Source: http://data.worldbank.org/ data set SP.URB.TOTL.IN.ZS

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Problem ● City resources are limited. ● Measuring _quality of life_ is complex: ○ Many factors... ○ ...which evolve over time... ○ ...and are valued differently by each _individual_.

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Solution ● Provide _simple, beautiful visualizations_ of the variations within a selected city. ● _ ● _Personalize_ this information by accounting for individual preferences and needs. ● _ ● _Empower_ citizens and visitors to make choices that positively impact their city experiences.

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Factors ● _Proximity to: ○ _ ○ _A body of water_ ○ _A green area_ ○ _A school ○ _Public transport ● _ ● _Temperature_ ● _ ● _Air Quality_ ● _ ● _Broadband Speed Sources: Sentinel Satellite Data via Ramani; Google Places APIs; http://www.fastweb.it

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Land Cover Type ↳ Nearest green area_ ↳ Nearest body of water_ CORINE/SENTINEL-2

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Temperature ↳ Warmest parts of city (heat island effect)_ SENTINEL-3

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Air Quality ↳ Carbon monoxide concentration_ SENTINELS-5P/5

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Case Study: Alice Alice is a young, healthy and active woman who loves hiking and swimming. She doesn't own a car, so living close to public transport is very important.

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Case Study: Bob Bob is a father of two who works from home. He values having parks and a school nearby so his children can walk there alone, and high speed internet for telecommuting.

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City Vibes Search for streets that suit your style

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Demo

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Business Model

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Stakeholders City Vibes Satellites Google Places 3rd party APIs End Users Industry/ Government

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Stakeholders Satellites Google Places 3rd party APIs End Users Industry/ Government _FREE_ _PAID_ City Vibes

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“An app like this, and the data it provides [...] would greatly improve what we do in city planning.” Oriol Camps Cervera, city council member in Berga, Spain City Government

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“Don’t miss the next home, it could the perfect match for you.” Daniel Juhl Mogensen, founder of boligbesked.dk Rental Market

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“Being able to offer more natural data [...] goes a long way to really get the flats people are looking for.” Alicia Ruiz Trasserra, owner of the real estate agency Immollac Real Estate Agents/Investors

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The Future

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Product Timeline _Alpha_ Yesterday :) _Beta_ End of this year. - Technical improvements. - Find partner to collaborate with. - Accumulate user feedback. _Release_ ASAP! - Paying customers.

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● Use _Sentinel-3 altimetry data_ and image recognition algorithms to estimate noise maps. ● _ ● _Merge Sentinel-2 and Sentinel-3 data_ to improve land cover classification. ● _ ● Add _validation_ via user/handheld device data. ● _ ● Add _cross-city_ comparisons. ● _ ● Add _social integration_. Platform Plans

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City Vibes Search for streets that suit your style _http://bit.ly/cityvibes_