Automatic ladybird beetle detection using deep-learning models.
Pablo VenegasFrancisco CalderonDaniel RiofríoDiego BenítezGiovani RamónDiego F Cisneros-HerediaMiguel CoimbraJosé Luis Rojo-ÁlvarezNoel PérezPublished in: PloS one (2021)
Fast and accurate taxonomic identification of invasive trans-located ladybird beetle species is essential to prevent significant impacts on biological communities, ecosystem functions, and agricultural business economics. Therefore, in this work we propose a two-step automatic detector for ladybird beetles in random environment images as the first stage towards an automated classification system. First, an image processing module composed of a saliency map representation, simple linear iterative clustering superpixels segmentation, and active contour methods allowed us to generate bounding boxes with possible ladybird beetles locations within an image. Subsequently, a deep convolutional neural network-based classifier selects only the bounding boxes with ladybird beetles as the final output. This method was validated on a 2, 300 ladybird beetle image data set from Ecuador and Colombia obtained from the iNaturalist project. The proposed approach achieved an accuracy score of 92% and an area under the receiver operating characteristic curve of 0.977 for the bounding box generation and classification tasks. These successful results enable the proposed detector as a valuable tool for helping specialists in the ladybird beetle detection problem.
Keyphrases
- deep learning
- convolutional neural network
- artificial intelligence
- machine learning
- climate change
- image quality
- loop mediated isothermal amplification
- big data
- human health
- computed tomography
- working memory
- real time pcr
- transcription factor
- label free
- electronic health record
- magnetic resonance
- quantum dots
- binding protein
- data analysis
- contrast enhanced
- sensitive detection