2018
DOI: 10.1088/1757-899x/444/5/052029
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Aspects concerning the optimal development of robotic systems architecture for waste sorting tasks

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Cited by 5 publications
(4 citation statements)
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References 12 publications
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“…Abu-Qdais et al compares traditional machine learning models like Random Forest and Support Vector Machine with deep learning CNN. Results indicate superior performance of CNN, and introduces JONET, a deep learning model based on DenseNet 201 for waste classification [20]. Hancu et al discuss aspects related to the selection of robotic system architecture for sorting solid recyclable waste streams.…”
Section: Related Workmentioning
confidence: 99%
“…Abu-Qdais et al compares traditional machine learning models like Random Forest and Support Vector Machine with deep learning CNN. Results indicate superior performance of CNN, and introduces JONET, a deep learning model based on DenseNet 201 for waste classification [20]. Hancu et al discuss aspects related to the selection of robotic system architecture for sorting solid recyclable waste streams.…”
Section: Related Workmentioning
confidence: 99%
“…This is why, an Automated Solid Waste Selection System would overcome the drawbacks of not recycling the solid waste. The concept of the system has been presented in the papers [8]- [10]. In order to design the conveyor and the robotic system as optimal as possible, it has been considered that the required workspace of the robots has to be as wide as the conveyor the other dimensions (length, and height) are user imposed (as presented in the Fig.…”
Section: Robot To Be Optimizedmentioning
confidence: 99%
“…The waste is taken from the moving conveyor and placed in a specific waste container, based on prior information received by and Image Acquisition System (see the Fig. 3) as presented in the concept from [3] and [4] (this aspect being beyond the scope of this paper).…”
Section: Robot To Be Optimizedmentioning
confidence: 99%
“…The concept of the Automated Solid Waste Selection System has been presented extensively in the papers [3] and [4] and is composed by a ramified Transportation System (TS) , such as set of conveyors that transport the unsorted waste (UW) from the loading point up to the unloading point, a waste Image Recognition and Sensorial System (IRS) , that identifies the type of waste that passes beneath, and a waste selective Robot Disposal System (RDS), that extracts a specific waste from the conveyor and places it in a specific container. If necessary, a more detailed description of the Automated Solid Waste Selection System is presented in the papers [3], [4].…”
Section: Introductionmentioning
confidence: 99%