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초록
With the growing use of electrical and electronic equipment (EEE), managing end-of-life EEE has become critical. Thus, the demand for sorting and detaching batteries from EEE in real time has increased. In this study, we investigated real-time object detection for sorting EEE, which using batteries, among numerous EEEs. To select products with batteries that have been mainly recycled, we crowd-sourced and gathered about 23,000 image datasets of the EEE with battery. Two learning techniques-data augmentation and transfer learning-were applied to resolve the limitations of the real-world data. We conducted YOLOv4-based experiments on the backbone and the resolution. Moreover, we defined this task as a binary classification problem; therefore, we recalculated the average precision (AP) scores from the network through postprocessing. We achieved battery -powered EEE detection scores of 90.1% and 84.5% at AP scores of 0.50 and 0.50-0.95, respectively. The re-sults showed that this approach can provide practical and accurate information in the real world, hence encouraging the use of deep learning in the pre-sorting stage of the battery-powered EEE recycling industry.
키워드
- 제목
- Study on the real-time object detection approach for end-of-life battery-powered electronics in the waste of electrical and electronic equipment recycling process
- 저자
- Yang, Seok Woo; Park, Hyun Joon; Kim, Jin Sob; Choi, Wonhee; Park, Jihwan; Han, Sung Won
- 발행일
- 2023-07-01
- 유형
- Article
- 저널명
- Waste Management
- 권
- 166
- 페이지
- 78 ~ 85