An Efficient Deep Learning-based approach for Recognizing Agricultural Pests in the Wild
This work addresses pest identification for farmers, but appears incremental as it experiments with existing techniques without introducing a novel method.
The paper tackles the problem of recognizing agricultural pests in the wild to help farmers take timely preventive measures, presenting experiments on the IP102 dataset with methods like transfer learning and attention mechanisms, but does not report specific numerical results.
One of the biggest challenges that the farmers go through is to fight insect pests during agricultural product yields. The problem can be solved easily and avoid economic losses by taking timely preventive measures. This requires identifying insect pests in an easy and effective manner. Most of the insect species have similarities between them. Without proper help from the agriculturist academician it is very challenging for the farmers to identify the crop pests accurately. To address this issue we have done extensive experiments considering different methods to find out the best method among all. This paper presents a detailed overview of the experiments done on mainly a robust dataset named IP102 including transfer learning with finetuning, attention mechanism and custom architecture. Some example from another dataset D0 is also shown to show robustness of our experimented techniques.