Fine-grained Retail Goods Recognition based on Deep Learning
DOI:
https://doi.org/10.54097/hset.v39i.6725Keywords:
Deep Learning; Retail Goods Recognition; Fine-grained Image Classification.Abstract
Nowadays, much effort has been devoted to image recognition technology, while the application of image recognition technology to the self-service checkout system of retail goods is still a subject with little research and great application value. For the problems of low efficiency and high cost of manual checkout in supermarkets, this study proposes to apply deep learning to commodity picture recognition. Due to the small difference between classes and the large difference within classes of commodity images, commodity image recognition is modeled as a fine-grained commodity image classification task, and the NTS-Net model is used to classify commodity images. The algorithm automatically extracts the partial features of commodity images and classifies them by combining partial features with the features of the whole commodity images. Training is conducted in a self-built commodity dataset, and tests the recognition effect of the model on commodity images from different angles and environments. This study show that the algorithm can effectively and accurately identify commodities, and the model has a good performance in identifying the side of commodities and the pictures of commodities with low brightness.
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References
Krizhevsky, A., Sutskever, I., Hinton, G.E.: Imagenet classification with deep con-volutional neural networks. In: NIPS. pp. 1097–1105 (2012).
Long, J., Shelhamer, E., Darrell, T.: Fully convolutional networks for semantic segmentation. CVPR (Nov 2015).
Liu,Yuan. Product Recognition on Shelves Based on Deep Neural Network [J]. Packaging Engineering,2020,41(01):149-155.DOI:10.19554/j.cnki.1001-3563.2020.01.023.
Li, Yan. Commodity Image Recognition Based on Deep Residual Shrinkage Network [J]. Journal of Test and Measurement Technology,2021,35(04):294-299+322.
Mei, Lyu. Research on Commodity Image Recognition Based on Deep Learning [J]. Mechanical & Electrical Engineering Technology,2018,47(09):28-31+151.
Yang, Ze, et al. "Learning to navigate for fine-grained classification." Proceedings of the European Conference on Computer Vision (ECCV). 2018.
Zhou, Zhi-Hua. "A brief introduction to weakly supervised learning." National science review 5.1 (2018): 44-53.
Branson, S., Horn, G.V., Belongie, S., Perona, P.: Bird species categorization using pose normalized deep convolutional nets. In: BMVC (2014).
Zhang, N., Donahue, J., Girshick, R., Darrell, T.: Part-based rcnn for fine-grained detection. In: ECCV (2014).
Lin, T.Y., Dollar, P., Girshick, R., He, K., Hariharan, B., Belongie, S.: Feature pyramid networks for object detection. In: CVPR (July 2017).
Grondman, Ivo, et al. "A survey of actor-critic reinforcement learning: Standard and natural policy gradients." IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews) 42.6 (2012): 1291-1307.
Liu, T.Y.: Learning to rank for information retrieval. Found. Trends Inf. Retr. 3(3), 225–331 (Mar 2009).
He, K., Zhang, X., Ren, S., Sun, J.: Deep residual learning for image recognition. In: CVPR. pp. 770–778 (2016).
Russakovsky O, Deng J, Su H, Krause J, Satheesh S, Ma S, Huang Z, Karpathy A, Khosla A, Bernstein M, Berg AC. Imagenet large scale visual recognition challenge. International journal of computer vision. 2015 Dec;115(3):211-52.
Ioffe, Sergey, and Christian Szegedy. "Batch normalization: Accelerating deep network training by reducing internal covariate shift." International conference on machine learning. PMLR, 2015.
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