2021
DOI: 10.30932/1992-3252-2020-18-156-173
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Features of Organisation of Transport and Logistics Cluster Prioritising Intelligent Transport Technologies Development

Abstract: The article examines the prospects for organizing a cluster as an effective tool for ensuring connectivity of territories of the Russian Federation through the systematic and integrated implementation of intelligent transport technologies, which corresponds to strategic directions of development of transport in the Russian Federation and determines the relevance of the topic. The objective of the study is to determine the features of organisation of the transport and logistics cluster prioritising development … Show more

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“…In the image recognition of LP products, R-CNN is used to extract the image features of the packaging products, but the disadvantage is that it is necessary to extract features for each candidate frame that may be redundant. In order to solve this problem, some scholars propose a Fast R-CNN model, using ROI-Pooling in the network to fix the feature size, only need to extract features from the entire image and intercept the features of the corresponding candidate frame from the image, which greatly reduces the detection time [3]. In warehousing logistics management, RFID technology can reduce out-of-stock losses and achieve transparent management of warehousing and logistics.…”
Section: Introductionmentioning
confidence: 99%
“…In the image recognition of LP products, R-CNN is used to extract the image features of the packaging products, but the disadvantage is that it is necessary to extract features for each candidate frame that may be redundant. In order to solve this problem, some scholars propose a Fast R-CNN model, using ROI-Pooling in the network to fix the feature size, only need to extract features from the entire image and intercept the features of the corresponding candidate frame from the image, which greatly reduces the detection time [3]. In warehousing logistics management, RFID technology can reduce out-of-stock losses and achieve transparent management of warehousing and logistics.…”
Section: Introductionmentioning
confidence: 99%