Recognition of Mushrooms and Classification of Edible and Toxic Families using Hardware Implementation of CNN Algorithms on an Embedded system

Q3 Pharmacology, Toxicology and Pharmaceutics
Tarik Bouganssa, Adil Salbi, Samar Aarabi, A. Lasfar, Abdellatif El Afia
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Abstract

In this work, new ideas in the realm of picture identification and classification are developed and implemented on hardware. This entails putting new algorithms into practice, whether for color, texture, or shape identification for AI (Artificial Intelligence) and picture recognition applications. We concentrate on identifying edible mushrooms in the harvesting and food manufacturing processes. Our proposal for an embedded system based on a Raspberry-Pi4 type microcomputer employing a combination of hardware and software components has helped with the recognition and classification of items in the image. Our object recognition system is built on a novel neighborhood topology and a cutting-edge kernel function that enables the effective embedding of image processing-related characteristics. We tested the suggested CNN-based object recognition system using a variety of challenging settings, including diverse fungus species, uncontrolled environments, and varying backdrop and illumination conditions. The outcomes were superior to various state-of-the-art outcomes. On the other hand, our contribution relating to the dynamic mode integrates a CNN network to accurately encode the temporal information with an attention mask allowing us to focus on the characteristics of an edible mushroom according to the state of the art, and guarantee the robustness of the recognition. We implemented our algorithm on a Raspberry Pi400-based embedded system connected to a CMOS camera-type image sensor plus an HMI human-machine interface for the instantaneous display of results for the rapid classification of edible and inedible mushrooms.
在嵌入式系统上利用 CNN 算法的硬件实现识别蘑菇并对食用蘑菇和有毒蘑菇进行分类
在这项工作中,开发了图片识别和分类领域的新思路,并在硬件上实现了这些新思路。这就需要将新算法付诸实践,无论是用于 AI(人工智能)和图片识别应用的颜色、纹理或形状识别。我们专注于在收获和食品制造过程中识别食用菌。我们提出了一个基于 Raspberry-Pi4 型微型计算机的嵌入式系统,采用硬件和软件组件相结合的方式,帮助识别图像中的物品并对其进行分类。我们的物体识别系统建立在新颖的邻域拓扑结构和先进的内核函数基础上,能够有效嵌入图像处理相关特征。我们使用各种具有挑战性的设置对所建议的基于 CNN 的物体识别系统进行了测试,包括不同的真菌种类、不受控制的环境以及不同的背景和光照条件。测试结果优于各种最先进的结果。另一方面,我们在动态模式方面的贡献是将 CNN 网络与注意力掩码整合在一起,对时间信息进行精确编码,使我们能够根据最新技术聚焦于可食用蘑菇的特征,并保证识别的鲁棒性。我们在一个基于 Raspberry Pi400 的嵌入式系统上实现了我们的算法,该系统与 CMOS 相机型图像传感器相连,并配有 HMI 人机界面,可即时显示结果,用于快速分类可食用和不可食用的蘑菇。
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来源期刊
Research Journal of Pharmacy and Technology
Research Journal of Pharmacy and Technology Pharmacology, Toxicology and Pharmaceutics-Pharmacology, Toxicology and Pharmaceutics (miscellaneous)
CiteScore
1.40
自引率
0.00%
发文量
0
期刊介绍: Research Journal of Pharmacy and Technology (RJPT) is an international, peer-reviewed, multidisciplinary journal, devoted to pharmaceutical sciences. The aim of RJPT is to increase the impact of pharmaceutical research both in academia and industry, with strong emphasis on quality and originality. RJPT publishes Original Research Articles, Short Communications, Review Articles in all areas of pharmaceutical sciences from the discovery of a drug up to clinical evaluation. Topics covered are: Pharmaceutics and Pharmacokinetics; Pharmaceutical chemistry including medicinal and analytical chemistry; Pharmacognosy including herbal products standardization and Phytochemistry; Pharmacology: Allied sciences including drug regulatory affairs, Pharmaceutical Marketing, Pharmaceutical Microbiology, Pharmaceutical biochemistry, Pharmaceutical Education and Hospital Pharmacy.
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