Oto-BaCTM: An automated artificial intelligence (AI) detector and counter for bagworm (Lepidoptera: psychidae) census
Mohd Najib Ahmad1, Abdul Rashid Mohamed Shariff2, Ishak Aris3, Izhal Abdul Halin4, Ramle Moslim5.
The bagworm species of Metisa plana, is one of the major species of leaf-eating insect pest that attack oil palm in Peninsular Malaysia. Without any treatment, this situation may cause 43% yield loss from a moderate attack. In 2020, the economic loss due to the bagworm attack was recorded at around RM 180 million. Based on this scenario, it is necessary to closely monitor the bagworm outbreak at the infested areas. Accuracy and precise data collection is debatable, due to human errors such as miscounting, cheating and creating data. The objective of this technology is to design and develop a specific machine vision that incorporates image processing algorithm according to its functional modes. The device, Automated Bagworm Counter or Oto-BaCTM is the first in the world to be developed. The software functions based on a graphic processing unit computation and used TensorFlow/Teano library set up for the trained dataset. The technology is based on the developed deep learning with Faster Regions with Convolutional Neural Networks technique towards real time object detection. The Oto-BaCTM uses an ordinary camera. By using self-developed Deep Learning algorithms, a motion-tracking and false color analysis are applied to detect and count number of living and dead larvae and pupae population per frond, respectively, corresponding to three major groups or sizes classification. Initially, in the first trial, the Oto-BaCTM has resulted in low percentages of detection accuracy for the living and dead G1 larvae (47.0% & 71.7%), G2 larvae (39.1 & 50.0%) and G3 pupae (30.1% & 20.9%). After some improvements on training dataset, the percentages increased in the next field trial, amount of 40.5% and 7.0% for the living and dead G1 larvae, 40.1% and 29.2% for the living and dead G2 larvae and 47.7% and 54.6% for the living and dead pupae. Furthermore, the development of the ground-based device is the pioneer in the oil palm industry, in which it reduces human error when conducting census while promoting precision agriculture practice.
Affiliation:
- Malaysia Palm Oil Board (MPOB), Malaysia
- Universiti Putra Malaysia, Malaysia
- Universiti Putra Malaysia, Malaysia
- Universiti Putra Malaysia, Malaysia
- Malaysia Palm Oil Board (MPOB), Malaysia
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