FORECASTING THE NUMBER OF VISITORS USING HOLTâS EXPONENTIAL SMOOTHING WITH CCTV ANALYTIC FOR DATA COLLECTION (CASE STUDY : BANDUNG STATION)
The high societies interaction in public area or other locations is a serious challenge for improving the surveillance system. The Close Circuit Television (CCTV) surveillance system is expected to be a solution, but in fact it has not contributed. CCTV which is passive monitoring and does not pr...
Saved in:
Main Author: | |
---|---|
Format: | Theses |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/64375 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | The high societies interaction in public area or other locations is a serious
challenge for improving the surveillance system. The Close Circuit Television
(CCTV) surveillance system is expected to be a solution, but in fact it has not
contributed. CCTV which is passive monitoring and does not provide feedback
needs improvement to become intelligent monitoring capable of recognizing
objects and counting the number of people. Even though so many research about
people counting, but the issue of counting the same object repeatedly in waiting
room or service location (slow moving object) is still a problem and how to use
the data that has been collected remains unanswered. Using the stages of Design
Science Research Methodology (DSRM), research produces artifacts to solve
problems through the stages of designing artifacts, demonstrating artifacts and
evaluating artifacts. Artifacts in the form of methods and models answer the
research objectives to minimize the number of the same object repeatedly and
analyze the dataset counting to see the trend of the number of visitors based on
case study data from Bandung station. Holt’s exponential smoothing forecasting
method was choosen because the characteristic of counting dataset are time
series, fluktuatif and adjusted to the research objectives. The artifact results of the
lost centroid handling method succeeded in maximizing the accuracy of counting
from 42% to 72% in slow moving locations. The average accuracy at the five
Bandung station locations is 85.4% with the highest 94% at the close-range south
exit location and the lowest at the north entrance waiting room location at 73%.
The results of artifact modeling forecasting Holt's exponential smoothing
succeeded in predicting trend the number of visitors with the lowest RMSE value
of 22.12 at the north entrance gate. |
---|