0% Complete
Home
/
13th International Conference on Computer and Knowledge Engineering
Leveraging the Power of Object Detection Models in Identifying Litter for a Significant Reduction in Environmental Pollution
Authors :
Lim Zhen Xian
1
Ervin Gubin Moung
2
Jason Teo Tze Wi
3
Nordin Saad
4
Farashazillah Yahya
5
Tiong Lin Rui
6
Ali Farzamnia
7
1- Faculty of Computing and Informatics Univerisity Malaysia Sabah
2- Faculty of Computing and Informatics Univerisity Malaysia Sabah
3- Faculty of Computing and Informatics Univerisity Malaysia Sabah
4- Faculty of Computing and Informatics Univerisity Malaysia Sabah
5- Faculty of Computing and Informatics Univerisity Malaysia Sabah
6- Faculty of Engineering, Universiti Malaysia Sabah
7- Faculty of Engineering, Universiti Malaysia Sabah
Keywords :
litter detection،object detection،YOLOv5،TACO dataset،optimal setup
Abstract :
The growing concern of litter pollution in natural environments has escalated into a significant issue that demands immediate and efficient resolution. Recent studies have used deep learning models to solve the problem of litter pollution, but these approaches have faced challenges in accurately detecting litter in real-world environments. Therefore, this paper has proposed a litter detection model and analyze its performance on the TACO dataset, which contains real-world outdoor environment images. The paper evaluates three distinct deep learning models (YOLOv4, YOLOv5, Faster R-CNN) and identifies the best performing model. The performance of the selected model is then enhanced through adjustments of hyperparameters, use of several preprocessing techniques and data augmentation techniques. The experimental results showed that YOLOv5x achieved 88% mAP@.5 and 71.4% mAP@.75 on testing dataset which outperformed the state-of-art studies. The findings of this paper provide valuable insights into the solution of litter pollution and can inform future research in this area.
Papers List
List of archived papers
Enhanced Autoencoder-based Clustering for Message Analysis in Binary Protocols
Mohaddese Nemati - Shiva Mahmoudzadeh - Mehdi Teimouri
A New Hypercube Variant: Pruned Shuffle Connected Cube
Reza Latifi - Mahmoud Naghibzadeh
Beyond Appearance: Transformer-based Person Identification from Conversational Dynamics
Masoumeh Chapariniya - Teodora Vukovic - Sarah Ebling - Volker Dellwo
Fine-tuned Generative Adversarial Network-based Model for Medical Image Super-Resolution
Alireza Aghelan - Modjtaba Rouhani
An Advanced Dual Attention-based U-Net Using Breast Ultrasound Data for Image Segmentation
Erfan Akbarnezhad Sany - Niloufar Asghari - Fatemeh Naserizadeh - Seyyed Abed Hosseini
Ramp Progressive Secret Image Sharing using Ensemble of Simple Methods
Atieh Mokhtari - Mohammad Taheri
Camouflage Object Segmentation with Attention-Guided Pix2Pix and Boundary Awareness
Erfan Akbarnezhad Sany - Fatemeh Naserizadeh - Parsa Sinichi - Seyyed Abed Hosseini
Human vs NotebookLM for Educational Podcasts: A Controlled Experiment on Two General Topics
Ali Banihashemi - Amirali Shahriary - Yadollah Yaghoobzadeh
TriFuse-PdM: High-Fidelity Machine Failure Prediction Using Hybrid Resampling and Model Calibration
Saghar Shafaati - Javad Mohammadzadeh
Facial Emotion Recognition Under Mask Coverage Using a Data Augmentation Technique
Aref Farhadipour - Pouya Taghipour
more
Samin Hamayesh - Version 43.7.0