Implementation of Digital Image Processing for Raspberry Pi-Based Warehouse Layout Settings
Abstract
Warehousing is a place for storing goods that are formed in such a way. Efficient and effective warehousing has the ability to adapt to demands to increase the speed of processes starting from receiving, storing and shipping. Good conditions and arrangements in the warehouse are expected to avoid company losses, reduce costs incurred and speed up activities and services at the warehouse. Therefore, we need an application that can support warehousing. In this case, we analyzed the warehousing system to support the warehousing process and designed a “Digital Image Processing Implementation for Raspberry Pi-Based Warehouse Layout Settings”. This design uses image processing. At this stage, the camera reads the object and the object image is processed by the microcontroller which will then be arranged according to the shape of the object. The objects are then separated using a servo motor according to a predetermined path so that the objects can be arranged according to size and not mixed up.References
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