the way to toilet during the night, electric shutters and
several environmental sensors.
Once the village will be operative, it will become
a source of data from which to draw for further anal-
ysis such as daily habits and interactions, normal and
abnormal behaviors, etc.
Attendance of Environments. Using localization
data it is possible to determine how patients relate
to the environment; this is particularly important in
a village like “Il Paese Ritrovato” that is constantly
investing in the research of new strategies to to make
patients live better. These data constitute an important
source of knowledge to evaluate patients’ response to
the introduction of new experimental techniques.
Interaction. Alzheimer’s disease is characterized
by difficulties in language, in performing actions, in
perception (agnosia), and in the execution of complex
movements (apraxia); linguistic problems are mainly
characterized by an impoverishment in the vocabulary
and a decrease in fluency, leading to a general deple-
tion of oral and written language. Caregivers usually
annotate relevant observed behaviors in order to track
the progression of the disease and to share these in-
formation with their colleague. The use of the data
collected in the structure allows continuous monitor-
ing of patient’s interaction, providing caregivers with
a basis of knowledge on which to base their observa-
tions.
Behavior. Many researchers are addressing the
problem of Activity Recognition and Behavioral
Changes leveraging Machine Learning Techniques on
data streams; their aim is to provide support in the
early diagnosis of chronic diseases and/or anomalies
(e.g., falls, strokes). The over mentioned dataset al-
lows the creation of behavioral path for the individual
defined as the sequentiality of his/her activities during
the day with their duration and location. Alzheimer’s
is a form of degenerative dementia that becomes pro-
gressively disabling for the individual, therefore the
timing of the evolution of these events are not known.
The creation of this behavioral path allows the iden-
tification of a growing discrepancy in the execution
of simple activities (e.g., having breakfast) and po-
tentially the delineation a different path of degener-
ation for each patient. In the intermediate phase of
the disease patients slowly are no longer able to per-
form daily activities, which entail a variation in the
daily routine of the patient. The caregiver needs to
know any variation in the schedule of activity of the
individual, in order to prevent possible abnormal sit-
uation.
4 CONCLUSIONS
A novel indoor localization system has been designed
to answer the needs of residential care for people af-
fected by Alzheimer’s disease. The application con-
text is “Il Paese Ritrovato”, a health-care facility
which is researching for innovative treatments to sup-
port the wellbeing of patients. Upon arrival in the
structure, patients are equipped with a bracelet con-
taining an iBeacon thanks to which they are moni-
tored during their stay. Data broadcasted by the iBea-
cons are collected through the use of Raspberry de-
vices acting as receiving antennas and analyzed with a
Web Server. The system evaluates the RSSI of the re-
ceived signal and corrects the computed position with
a probabilistic approach to avoid wall-crossing. In the
traditional approach, the beacons are positioned per-
manently while the BLE enabled device is in motion.
The system implemented involves a reverse approach:
the beacons become the moving devices, to be lo-
cated thanks to the antennas (BLE enabled devices)
arranged in the environments.
The first contribution of the paper is the design
of an indoor localization system which is accepted
and used on people affected by Alzheimer disease.
Thus, caregivers have the possibility to monitor their
patients using a mobile application which is able to
show their position on the map and notify whenever a
patient is violating a virtual fence.
The second contribution of this work is the cre-
ation of a new dataset referring to the life of elderly af-
fected by Alzheimer’s disease in a controlled environ-
ment. This dataset will contain data referring to the
localization of people, their interaction with IoT de-
vices, their medicines and meals consumptions, their
activities and expert annotations. All the collected
data will be extremely important for analysis in the
field of Behavioral Drift with the aim of identifying
- for example - what triggers an acceleration in the
progression of the disease.
This system is currently in an experimental state
at the structure built by the La Meridiana cooperative
which will open in June 2018.
ACKNOWLEDGEMENTS
Authors would like to thanks La Meridiana coopera-
tive and Fabrizio Danese who contributed to this work
with his Master Thesis in Computer Science at Po-
litecnico di Milano University.
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