Chili Pepper Disease Diagnosis via Image Reconstruction Using GrabCut and Generative Adversarial Serial Autoencoder
Jongwook Si, Sungyoung Kim

TL;DR
This paper introduces a novel chili pepper disease diagnosis method using image reconstruction with GrabCut and a generative adversarial serial autoencoder, achieving superior accuracy in anomaly detection.
Contribution
It presents a new network architecture combining GrabCut and a serial autoencoder with GANs for improved disease detection in chili peppers.
Findings
Higher detection accuracy than previous methods
Effective background removal with GrabCut
Superior image-based scoring performance
Abstract
With the recent development of smart farms, researchers are very interested in such fields. In particular, the field of disease diagnosis is the most important factor. Disease diagnosis belongs to the field of anomaly detection and aims to distinguish whether plants or fruits are normal or abnormal. The problem can be solved by binary or multi-classification based on CNN, but it can also be solved by image reconstruction. However, due to the limitation of the performance of image generation, SOTA's methods propose a score calculation method using a latent vector error. In this paper, we propose a network that focuses on chili peppers and proceeds with background removal through Grabcut. It shows high performance through image-based score calculation method. Due to the difficulty of reconstructing the input image, the difference between the input and output images is large. However, the…
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Taxonomy
TopicsSmart Agriculture and AI
