Denoising Convolutional Variational Autoencoders-Based Feature Learning for Automatic Detection of Plant Diseases

Author(s):  
Vicky Zilvan ◽  
Ade Ramdan ◽  
Endang Suryawati ◽  
R. Budiarianto S. Kusumo ◽  
Dikdik Krisnandi ◽  
...  
2018 ◽  
Vol 39 (11) ◽  
pp. 115010
Author(s):  
Marcela Tobón-Cardona ◽  
Tuomas Kenttä ◽  
Kimmo Porthan ◽  
Jani T Tikkanen ◽  
Lasse Oikarinen ◽  
...  

2018 ◽  
Vol 7 (2.21) ◽  
pp. 372
Author(s):  
K S. Archana ◽  
Arun Sahayadhas

Automatic detection of plant diseases is one the important challenging problems in agriculture field. So the basic analyzing method for automatic identification is filtering technique of preprocessing method. Hence, this Image filtering plays a important role to remove noise from image. Consequently this preprocessing method is the initial stage to make better image quality. The purpose of this paper is comparing four types of filtering techniques to differentiate the image quality in Gaussian filter, median filter, mean filter and weiner respectively filter using common data set. The image quality of overall results shows that the comparison of various filtering technique performed to enhancement quality using hybrid technique. So this paper gives best starting for researchers to automatic detection of rice plant disease detection.  


The diseases in the Brinjal can be identified through the symptoms occur in Brinjal leaf. The indication in touch difference bin of various plant diseases. The designation of disease detection need the specialist's opinion. The inappropriate identification can result in tremendous quantity of economic loss for farmers. Rather than manual identification, computers are accustomed to give automatic detection and classifying differing kinds of diseases. In this paper, lesion areas affected by diseases are segmented using different techniques, namely DeltaE, Otsu, FCM, k-means algorithm are employed. The proposed method is the image blend by discrete wavelet transforms to increase the excellence of image and reduce uncertainty and redundancy for identification and assessment of agricultural yield which can be done by DeltaE. Further color, texture and structural based features are mixed collectively for getting better performance when compared with single feature extraction.


Author(s):  
Zia Ullah Khan ◽  
Tallha Akram ◽  
Syed Rameez Naqvi ◽  
Sajjad Ali Haider ◽  
Muhammad Kamran ◽  
...  

2021 ◽  
Vol 13 (19) ◽  
pp. 3841
Author(s):  
Krishna Neupane ◽  
Fulya Baysal-Gurel

Disease diagnosis is one of the major tasks for increasing food production in agriculture. Although precision agriculture (PA) takes less time and provides a more precise application of agricultural activities, the detection of disease using an Unmanned Aerial System (UAS) is a challenging task. Several Unmanned Aerial Vehicles (UAVs) and sensors have been used for this purpose. The UAVs’ platforms and their peripherals have their own limitations in accurately diagnosing plant diseases. Several types of image processing software are available for vignetting and orthorectification. The training and validation of datasets are important characteristics of data analysis. Currently, different algorithms and architectures of machine learning models are used to classify and detect plant diseases. These models help in image segmentation and feature extractions to interpret results. Researchers also use the values of vegetative indices, such as Normalized Difference Vegetative Index (NDVI), Crop Water Stress Index (CWSI), etc., acquired from different multispectral and hyperspectral sensors to fit into the statistical models to deliver results. There are still various drifts in the automatic detection of plant diseases as imaging sensors are limited by their own spectral bandwidth, resolution, background noise of the image, etc. The future of crop health monitoring using UAVs should include a gimble consisting of multiple sensors, large datasets for training and validation, the development of site-specific irradiance systems, and so on. This review briefly highlights the advantages of automatic detection of plant diseases to the growers.


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