Automatic plant pest detection and recognition using k-means clustering algorithm and correspondence filters

Faithpraise, Fina, Birch, Philip, Young, Rupert, Obu, J, Faithpraise, Bassey and Chatwin, Chris (2013) Automatic plant pest detection and recognition using k-means clustering algorithm and correspondence filters. International Journal of Advanced Biotechnology and Research, 4 (2). pp. 189-199. ISSN 0976-2612

[img]
Preview
PDF - Accepted Version
Available under License Creative Commons Attribution.

Download (2MB) | Preview

Abstract

Plant pest recognition and detection is vital for food security, quality of life and a stable agricultural economy. This research demonstrates the combination of the k-means clustering algorithm and the correspondence filter to achieve pest detection and recognition. The detection of the dataset is achieved by partitioning the data space into Voronoi cells, which tends to find clusters of comparable spatial extents, thereby separating the objects (pests) from the background (pest habitat). The detection is established by extracting the variant distinctive attributes between the pest and its habitat (leaf, stem) and using the correspondence filter to identify the plant pests to obtain correlation peak values for different datasets. This work further establishes that the recognition probability from the pest image is directly proportional to the height of the output signal and inversely proportional to the viewing angles, which further confirmed that the recognition of plant pests is a function of their position and viewing angle. It is encouraging to note that the correspondence filter can achieve rotational invariance of pests up to angles of 360 degrees, which proves the effectiveness of the algorithm for the detection and recognition of plant pests.

Item Type: Article
Schools and Departments: School of Engineering and Informatics > Engineering and Design
Subjects: T Technology > TA Engineering (General). Civil engineering (General) > TA0164 Bioengineering
Depositing User: Fina Otosi Faithpraise
Date Deposited: 24 Jun 2014 07:07
Last Modified: 06 Mar 2017 12:06
URI: http://sro.sussex.ac.uk/id/eprint/49042

View download statistics for this item

📧 Request an update