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Research Goals
The goal of Activity Recognition is to recognize the actions and objective of one or more users from a series of observations on the user’s actions and surrounding environment. The series of observations on the user’s action can be observed through stream of sensory data. The sensors can be audio/video sensors, body attached sensors (e.g. accelerometer), simple and ubiquitous sensors (e.g. Berkley Motes). Our main focus of this project is to recognize activity of daily livings using the combination of aforementioned sensors. Fist step will be to deploy these sensors in a home. And than we will be studding different applications in activity recognition; examples include assisting the elderly, sick and disabled.
Research Description

In ubiquitous home network, recognition of daily activities (Taking medication, sleeping, etc.) is one of the current focuses of Researchers. Especially in health care industry it has a huge impact. As an example, monitoring daily activities can reduce the risk of elderly people or chronically ill children.

Three different approaches have been tried by the researchers to detect human activity: video based, wearable sensors based, and based on sensors deployed in the environment. In these approaches, only limited number of activities was focused. And the accuracy is not up to the mark. On the other hand we will recognize thousands human activities from micro to macro using the combination of all these approaches such that a better accuracy can be achieved.

Unavailability of data set that represents activities makes it difficult to progress in activity recognition research. Real world data is hard to find. Even if we can obtain this, there will be noises. Existing deployments, generates thousands of sensor data from the environment but very few activities are instantiated. Collecting the data and help the research community is also a part of our research.

Expected Research Outcomes
  1. Efficient way setup a home for ubiquitous health care.
  2. Dataset to help the research community.
  3. Activity model: Activity modeling is the way to realize the association between low level and high level activity, trajectory of a user and activity, object uses and corresponding activity.
  4. Activity detection algorithms
    1. Robust and scalable.
    2. Algorithms to recognize activities based on Simple and Ubiquitous sensors.
    3. Algorithms to recognize activities using Audio/Video sensors.
    4. Algorithms to recognize activities through wearable sensors
    5. lgorithms to recognize activities combining all three types of sensors.
:: UC Lab News
06-24-2008
New website launched by Activity Recognition team...
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