OBJECT DETECTION AND DISTANCE MEASUREMENT USING THE COMBINATION FUNCTION OF 2D LIDAR SENSORS AND CAMERA
Automation systems in transport vehicles such as forklifts can provide solutions in terms of time, quantity, and accommodation costs during operation, as conventional forklift operation requires drivers with specific certifications and qualifications. Automation in forklifts requires various cont...
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Format: | Theses |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/74692 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Automation systems in transport vehicles such as forklifts can provide solutions in
terms of time, quantity, and accommodation costs during operation, as
conventional forklift operation requires drivers with specific certifications and
qualifications. Automation in forklifts requires various control functions that utilize
various types of data. Some functions needed in forklift automation include object
detection and object distance measurement. Object distance measurement will
utilize LiDAR (Light Detection and Ranging) technology, which offers high
accuracy with a wide detection range and can be used at various scanning angles.
Using 2D LiDAR for scanning can only provide output in the form of detection
along a single horizontal line, so for three-dimensional object recognition, the
system requires additional supporting sensors such as cameras. Object detection
or recognition using cameras can be performed using deep learning applications
with specific datasets of objects to be detected. Object detection is implemented
using YOLOv5, while object distance measurement utilizes data fusion and
projection from 2D LiDAR with camera data. In this system, object detection data
is provided with a precision of 0.97945 using YOLOv5 model with type-m epoch
100, while the best distance measurement is achieved using the projection method
from 2D LiDAR data to the camera with an error rate of 0.15%. |
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