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Napovedovanje uporabniških dogodkov pametnega doma
ID PEKLENIK, SARA (Author), ID Košir, Andrej (Mentor) More about this mentor... This link opens in a new window

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Abstract
Demografske razmere vodijo v velike izzive, povezane z zagotavljanjem učinkovite oskrbe starejših. Tehnologije pametnega doma lahko s pomočjo senzorjev in metod strojnega učenja omogočajo spremljanje aktivnosti stanovalcev in s tem podpirajo samostojno bivanje v domačem okolju. V diplomski nalogi z namenom vzpostavitve situacijskega zavedanja obravnavamo problem napovedovanja dogodkov pametnega doma. Predstavimo področje: podatkovne zbirke, algoritme za prepoznavo dogodkov in metrike za vrednotenje, ki se pogosto uporabljajo. Na naboru podatkov Kyoto iz podatkovne baze CASAS preizkusimo napovedovanje dogodkov z algoritmom AL-Smarthome, ki je bil znotraj projekta CASAS implementiran v okolju Python. Napovedi osmih aktivnosti ovrednotimo s kazalniki natančnost, priklic in mera F1, zanje izrišemo krivulje ROC in napovedi predstavimo na časovnicah. Rezultati kažejo, da model zazna večino dejanskih segmentov aktivnosti (makro povprečje priklica 0,71), vendar generira tudi večje število lažno pozitivnih napovedi (makro povprečje natančnosti 0,39), kar je predvsem posledica težav pri zaznavanju mej med posameznimi aktivnostmi. Ugotavljamo, da bi natančnost modela lahko izboljšali z vključitvijo neoznačenih podatkov, metodami za zaznavanje prehodnih točk med aktivnostmi ali uporabo časovnih oken, prilagojenih dolžini posamezne aktivnosti.

Language:Slovenian
Keywords:pametni dom, prepoznava aktivnosti, napovedovanje dogodkov, strojno učenje, podatkovna množica CASAS
Work type:Undergraduate thesis
Organization:FE - Faculty of Electrical Engineering
Year:2026
PID:20.500.12556/RUL-182055 This link opens in a new window
Publication date in RUL:23.04.2026
Views:29
Downloads:6
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Secondary language

Language:English
Title:Smart home user events prediction
Abstract:
Population ageing makes providing effective care for the elderly an increasingly significant challenge. Smart home technologies leverage sensors and machine learning methods to monitor residents' activity and support independent living. In this thesis we discuss the problem of predicting smart home events with the aim of establishing situational awareness. We provide an overview of the field, covering commonly used datasets, activity recognition algorithms, and evaluation metrics. Using the Kyoto dataset from the CASAS database, we evaluate activity recognition using the AL-Smarthome algorithm implemented in Python as part of the CASAS project. Predictions of eight activities are assessed using precision, recall and F1 measure. We plot ROC curves and visualize the predictions on timelines. Results show that the model detects the majority of true activity segments (macro average recall 0.71), but it also generates a considerable amount of false positives (macro average precision 0.39), which is mostly due to boundary detection issues. We conclude that model performance could be improved by including unlabeled data, using additional machine learning methods for change point detection or using time windows based on the duration of individual activities.

Keywords:smart home, activity recognition, machine learning, training set CASAS

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