Chili Pepper Pests and Disease Detection System for the Greenhouse Environment
Abstract
The cultivation of chili peppers in greenhouse environments faces significant challenges
due to pest infestations and diseases, leading to economic losses and diminished
crop yields. To address these challenges, this research focuses on the proposed Chili
Pepper Pests and Disease Detection System tailored for greenhouse settings. The
system integrates advanced sensor networks, machine learning algorithms, and image
recognition technology to monitor environmental conditions, detect pests, and identify
diseases affecting chili pepper plants. Data is gathered directly from individuals engaged
in greenhouse operations, including employees and experts, through semi-structured
interviews to understand their perspectives, experiences, and insights regarding pest
detection challenges and preferences within greenhouse environments. These insights
will guide the conceptualization and formulation of requirements for the proposed
system. The research outcomes highlight the understanding of challenges, stakeholder
needs, potential technological solutions based on literature findings, and a roadmap
for subsequent development phases of the proposed system. Ultimately, this study
contributes to advancing sustainable cultivation practices and optimizing chili pepper
production in greenhouse environments.