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Open AccessProceedings ArticleDOI

Detection of Corn Gray Leaf Spot Severity Levels using Deep Learning Approach

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TLDR
In this paper, a simple Convolutional Neural Network (CNN) based deep learning (DL) model has been proposed for multi-classification of corn gray leaf spot (CGLS) disease based on five different severity levels of CGLS disease on the corn plant.
Abstract
A simple Convolutional neural network (CNN) based deep learning (DL) model has been proposed for multi-classification of corn gray leaf spot (CGLS) disease based on five different severity levels of CGLS disease on the corn plant. Certain corn leaf diseases like CGLS, common rust, and leaf blight are quite common and dangerous in corn harvest. Hence, the current work presents a solution for CGLS disease detection on corn plants using a multi-classification DL model which gives the best detection accuracy of 95.33% in high-risk severity level image. Along with this comparison of five different severity levels has also been conducted based on resulted performance measures (PM).

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GAN based image augmentation for increased CNN performance in Paddy leaf disease classification

TL;DR: This work cogitates three paddy leaf diseases for the creation of an AI-based robust detection and classification model using a novel approach to the convolutional neural network with the combination of augmentation and a CNN model tuner.
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A Novel Hybrid Severity Prediction Model for Blast Paddy Disease Using Machine Learning

TL;DR: In this article , a hybrid prediction model was developed to predict various levels of severity of blast disease based on diseased plant images, which achieved 97% accuracy with the help of CNN and SVM.
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An Empirical Analysis of Python Programming for Advance Computing

TL;DR: This paper will first explain Python as a language, then introduce Data Science, Machine learning, and IOT, describing prominent packages in the Data Science and Machine learning community, such as NumPy, SciPy, TensorFlow, Keras, Matplotlib.
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Intelligent Agents based Integration of Machine Learning and Case Base Reasoning System

TL;DR: This paper used intelligent agent-based machine learning techniques to select the best suppliers and for further process seed it in case base to form the basis intelligent system that would operate in complex environment.
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Supply Chain Management using Soft Computing: A Review

TL;DR: Empirical findings on using soft computing technology applications insupply chain management to improve the supply chain efficiency are compiled.
References
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Journal ArticleDOI

Effect of pitch enhancement in Punjabi children's speech recognition system under disparate acoustic conditions

TL;DR: After enhancing the pitch using the Cepstral analysis in the feature extraction process, the recognition rate of the children's speech recognition system using different age group datasets increases as compared to the normal acoustics features extracted using Mel Frequency CepStral Coefficient (MFCC) feature extracted process.
Journal ArticleDOI

Deep learning-based feature extraction and optimizing pattern matching for intrusion detection using finite state machine

TL;DR: Two methods including Deep Learning-based Feature Extraction (DLFE) and Optimization of Pattern Matching (OPM) for NIDPS systems to optimizes the pattern matching engine in intrusion detection are proposed.
Journal ArticleDOI

Detection of disease on corn plants using convolutional neural network methods

TL;DR: In this study Deep Learning was used for the diagnosis of corn plant disease using the Convolutional Neural Network method, with an accuracy of 99%, in detecting disease in corn plants.
Proceedings ArticleDOI

A Method of Corn Disease Identification Based on Convolutional Neural Network

TL;DR: The experimental results of three samples in Changchun show that the convolutional neural network method can effectively identify the common diseases of maize, such as big spot, head Smut, rust, smut, crown rot and sheath blight, and the comprehensive identification rate can reach 96.8%, which can be applied to practical production management.
Proceedings ArticleDOI

Deep learning in Human Gait Recognition: An Overview

TL;DR: In this article, the authors discuss human gait and the recognition of these events based on various deep learning models, issues and challenges that are related to Gait are also elaborated with prominent techniques used in gait recognition.