DETECTION AND RECOGNITION OF BANGLADESHI FISHES USING SURF AND CONVOLUTIONAL NEURAL NETWORK

Main Author: M. I. Pavel , A. Akther , I. Chowdhury , S. A. Shuhin and J. Tajrin.
Format: Article eJournal
Terbitan: , 2019
Subjects:
Online Access: https://zenodo.org/record/3356593
Daftar Isi:
  • This paper represents a model to detection and recognize local fishes of Bangladesh implementing image processing and neural networking approaches. The aim of the research work is to apply computer vision and AI techniques so that people of next generation can recognize Bangladeshi fishes as most of the young people in city, have less idea to classify traditional and deshi fishes. We implemented our custom Dataset consisting of 400 sample images for the experiment method to measure out its credibility. In the proposed, model sequential grassfire algorithm is used along with pre-processing techniques like noise cancelation, gray scaling, flood-fill method, binarization to detect and analysis shape of fish. Further, to do classification and recognition of the detected fishes, convolutional neural network (CNN) and method of Speeded up robust feature (SURF) had been applied to visualize difference between to techniques. CNN architecture got better accuracy with 90.9% score for recognition and classify fishes where SURF algorithm visualize better recognition matching putative points after extracting features.