Using Pretrained AlexNet Deep Learning Neural Network for Recognition of Underwater Objects
Piotr Szymak, Marek Gąsiorowski
- Year
- 2020
- Citations
- 12
- Access
- Open access
Abstract
Recently, the growing number of Autonomous Underwater Vehicles (AUVs) can be seen. These vehicles are power supplied and controlled from the sources located on their boards. To operate autonomously underwater robots have to be equipped with the diff erent sensors and software for making decision based on the signals from these sensors. The goal of the paper is to show initial research carried out for underwater objects recognition based on video images. Based on several examples included in the literature, the object recognition algorithm proposed in the paper is based on the deep neural network. In the research, the network and training algorithms accessible in the Matlab have been used. The fi nal software will be implemented on board of the Biomimetic Autonomous Underwater Vehicle (BAUV), driven by undulating propulsion imitating oscillating motion of fi ns, e.g. of a fi sh.
Keywords
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