Smartphones May Soon Make Your Commute Less Stressful: Study

Advertisement
By ANI | Updated: 12 October 2018 18:15 IST
Highlights
  • Apps can soon detect what mode of transport commuters are using
  • They can even offer relevant advice automatically
  • The project gathered data from four mobile phones carried by researchers

According to a new research, apps can soon detect what mode of transport commuters are using and automatically offer relevant advice.

Researchers at the University of Sussex's Wearable Technologies Lab believe that the machine learning techniques developed in a global research competition they initiated could also lead to smartphones being able to predict upcoming road conditions and traffic levels, offer route or parking recommendations and even detect the food and drink consumed by a phone user while on the move. The study appeared in the Journal of the ACM.

"Previous studies generally collected only GPS and motion data. Our study is much wider in scope: we collected all sensor modalities of smartphones, and we collected the data with phones placed simultaneously at four locations where people typically carry their phones such as the hand, backpack, handbag and pocket," said study author Daniel Roggen.

Advertisement

"This is extremely important to design robust machine learning algorithms. The variety of transport modes, the range of conditions measured and the sheer number of sensors and hours of data recorded is unprecedented," he added.

Advertisement

Roggen and his team collected the equivalent of more than 117 days' worth of data monitoring aspects of commuters' journeys in the UK using a variety of transport methods to create the largest publicly available data set of its kind.

The project gathered data from four mobile phones carried by researchers as they went about their daily commute over seven months.

Advertisement

The team launched a global competition challenging teams to develop the most accurate algorithms to recognise eight modes of transport (sitting still, walking, running, cycling or taking the bus, car, train or subway) from the data collected from 15 sensors measuring everything from movement to ambient pressure.

The project saw 17 teams take part with two entries achieving results with more than 90 per cent accuracy, eight with between 80 and 90 per cent, and nine between 50 and 80 per cent.

Advertisement

The winning team, JSI-Deep of the Jozef Stefan Institute in Slovenia, achieved the highest score of 93.9 per cent through the use of a combination of deep and classical machine learning models. In general, deep learning techniques tended to outperform traditional machine learning approaches, although not to any significant degree.

It is now hoped that the data set will be used for a wide range of studies into electronic logging devices exploring transportation mode recognition, mobility pattern mining, localisation, tracking, and sensor fusion.

"By organising a machine learning competition with this dataset we can share experiences in the scientific community and set a baseline for future work. Automatically recognising modes of transportation is important to improve several mobile services - for example to ensure video streaming quality despite entering in tunnels or subways, or to proactively display information about connection schedules or traffic conditions," said Roggen.

 

Get your daily dose of tech news, reviews, and insights, in under 80 characters on Gadgets 360 Turbo. Connect with fellow tech lovers on our Forum. Follow us on X, Facebook, WhatsApp, Threads and Google News for instant updates. Catch all the action on our YouTube channel.

Further reading: Apps
Advertisement

Related Stories

Popular Mobile Brands
  1. Cloudflare Is Down Again For the Second Time in Weeks: See Affected Sites
  2. ACT Fibernet Launches New Broadband Plans With Free OTT Subscriptions
  3. OnePlus 15R Surfaces on Benchmarking Site Ahead of India Launch
  4. Nothing Phone 3a Lite Goes on Sale in India at This Price
  5. Realme P4x 5G Review
  6. Motorola Edge 70 With Pantone's 2026 Colour, Swarovski Crystals Launched
  7. HMD 101, HMD 100 With Built-In Radio Launched in India at These Prices
  8. Instamart to Provide 10-Minute Delivery of Samsung Galaxy Devices
  9. OTT Releases of the Week (Dec 1 – Dec 7): Know What to Watch
  10. Airtel Discontinues These Prepaid Recharge Packs in India
  1. Google's Year in Search 2025 Reveals Gemini 3, Nano Banana Pro and Other AI Search Features Launched in India 2025
  2. Polar Loop Screen-Free Fitness Tracker Launched in India With Up to Eight Days of Battery Life: Price, Specifications
  3. Motorola Edge 70 India Launch Teased; Flipkart Availability Confirmed: Expected Specifications, Features
  4. Google’s Year in Search 2025: Top Trending Topics in India—From Gemini to Squid Games
  5. Vivo S50 Colour Options, Key Features Surface Online; Could Launch in India as Vivo V70
  6. CFTC Clears Path for Spot Crypto Trading on Regulated Platforms for the First Time
  7. Realme 16 Pro+ 5G Colour Options, Memory Configurations Leaked Again; Tipped to Launch With 7,000mAh Battery
  8. Cloudflare Outage Blocks Access to Several Websites Including BookMyShow, SpaceX, Coinbase
  9. Samsung Galaxy S26 Series to Offer Built-In Support for Company's 25W Magnetic Qi2 Charger: Report
  10. Airtel Discontinues Two Prepaid Recharge Packs in India With Data Benefits, Free Airtel Xtreme Play Subscription
Gadgets 360 is available in
Download Our Apps
Available in Hindi
© Copyright Red Pixels Ventures Limited 2025. All rights reserved.