Naranjo-Alcazar, Javier
Automatic Counting and Classification of Mosquito Eggs in Field Traps
Naranjo-Alcazar, Javier, Grau-Haro, Jordi, Zuccarello, Pedro, Almenar, David, Lopez-Ballester, Jesus
Insect pest control is a global challenge affecting public health, food safety and the natural environment. Mosquito-borne diseases, such as dengue, malaria or Zika virus, pose a significant threat to the health of the world's population. Although, traditionally, certain species of mosquitoes that act as disease vectors have been concentrated in tropical or subtropical regions, today, due to factors such as climate change, these insects have expanded their presence to geographic regions where they were not previously present [1]. On the other hand, insect pests related to agricultural activity can cause significant economic losses by destroying crops and reducing food production [2]. In this context, the Sterile Insect Technique (SIT) [3] is considered a promising strategy for pest control, offering a sustainable and environmentally friendly alternative to other pest control methods such as chemical pesticides.
Practical aspects for the creation of an audio dataset from field recordings with optimized labeling budget with AI-assisted strategy
Naranjo-Alcazar, Javier, Grau-Haro, Jordi, Ribes-Serrano, Ruben, Zuccarello, Pedro
Machine Listening focuses on developing technologies to extract relevant information from audio signals. A critical aspect of these projects is the acquisition and labeling of contextualized data, which is inherently complex and requires specific resources and strategies. Despite the availability of some audio datasets, many are unsuitable for commercial applications. The paper emphasizes the importance of Active Learning (AL) using expert labelers over crowdsourcing, which often lacks detailed insights into dataset structures. AL is an iterative process combining human labelers and AI models to optimize the labeling budget by intelligently selecting samples for human review. This approach addresses the challenge of handling large, constantly growing datasets that exceed available computational resources and memory. The paper presents a comprehensive data-centric framework for Machine Listening projects, detailing the configuration of recording nodes, database structure, and labeling budget optimization in resource-constrained scenarios. Applied to an industrial port in Valencia, Spain, the framework successfully labeled 6540 ten-second audio samples over five months with a small team, demonstrating its effectiveness and adaptability to various resource availability situations.
Female mosquito detection by means of AI techniques inside release containers in the context of a Sterile Insect Technique program
Naranjo-Alcazar, Javier, Grau-Haro, Jordi, Almenar, David, Zuccarello, Pedro
The Sterile Insect Technique (SIT) is a biological pest control technique based on the release into the environment of sterile males of the insect species whose population is to be controlled. The entire SIT process involves mass-rearing within a biofactory, sorting of the specimens by sex, sterilization, and subsequent release of the sterile males into the environment. The reason for avoiding the release of female specimens is because, unlike males, females bite, with the subsequent risk of disease transmission. In the case of Aedes mosquito biofactories for SIT, the key point of the whole process is sex separation. This process is nowadays performed by a combination of mechanical devices and AI-based vision systems. However, there is still a possibility of false negatives, so a last stage of verification is necessary before releasing them into the environment. It is known that the sound produced by the flapping of adult male mosquitoes is different from that produced by females, so this feature can be used to detect the presence of females in containers prior to environmental release. This paper presents a study for the detection of females in Aedes mosquito release vessels for SIT programs. The containers used consist of PVC a tubular design of 8.8cm diameter and 12.5cm height. The containers were placed in an experimental setup that allowed the recording of the sound of mosquito flight inside of them. Each container was filled with 250 specimens considering the cases of (i) only male mosquitoes, (ii) only female mosquitoes, and (iii) 75% males and 25% females. Case (i) was used for training and testing, whereas cases (ii) and (iii) were used only for testing. Two algorithms were implemented for the detection of female mosquitoes: an unsupervised outlier detection algorithm (iForest) and a one-class SVM trained with male-only recordings.