Monitoring of endangered fish using image processing and AI tools
Abstract
Marine life constitutes half of earth’s total biodiversity. But preservation and monitoring
of them efficiently face setbacks largely due to technological limitations and economic
reasons. Technological challenges include lack of effective image processing methods
curtailed to underwater environment. Underwater image processing, object detection and
classification have always been a challenge to accomplish through traditional methods. The
methods including sonar radiation produces results, but they are nowhere near economical
or accurate as intended. Alternatively, research has been conducted in solid and stationary
object detection. Combining the knowledge of the already existing researches done in object
detection, in this thesis, we compare performances of various classification algorithms using
the data extracted from images of fishes taken in various luminous conditions. For this paper
we will only consider large to medium sized fishes but exclude other non-chordate bio-life.
The first step is to prepare the images for suitable feature extraction.The next step is to extract
suitable features from the available images of the dataset.The next step is to classify the
fishes through four different classifiers (SVM, KNN, NB and Random forest classifier) on
the basis of the features we have extracted. Lastly we compare the relative performances of
these classifiers.