Automated Waste Management System: A Deep Learning Approach
Suvarna Patil, Rajashree S. Salunke, Vedant S. Sapkale, Rohan Sawant
- 发表年份
- 2024
- 引用次数
- 2
摘要
In response to the growing challenges of waste management, particularly in urban areas, this study presents an innovative approach leveraging deep learning techniques for automated waste management. Traditional waste management systems often struggle with inefficiencies in waste sorting and processing, leading to environmental pollution and resource wastage. To address these issues, this research proposes an automated system that utilizes deep learning algorithms to classify waste items accurately. By training deep neural networks on large datasets of waste images, the system can categorize waste items into predefined classes, enabling automated sorting processes. Integration with robotic systems allows for the implementation of real-time waste sorting and processing, reducing the need for manual intervention and improving overall efficiency. The proposed approach aims to enhance waste management practices, promote recycling efforts, and contribute to environmental sustainability. Through the adoption of advanced technologies such as deep learning, this automated waste management system offers a promising solution to the challenges of modern waste management.
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