Fish Recognition Using Deep Neural Network

K. Babu, B. Kumar, S. Prasad, Sreevarsha Maheshwaram, Akhila Yakkali
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引用次数: 1

Abstract

Fish recognition is the various essential factors of fishery studies applications, where a massive quantity of facts is gathered quickly. Due to bad picture quality, uncontrollable objects, and the environment, in addition to the problems in getting consultant samples, underwater picture popularity poses particular challenges. The primary purpose of this study is to create a supervised feature learning-based fish recognition framework. The required data is provided for further analysis based on medical and fish market usage. The system modules in this work are built using deep neural networks. Neural networks will increase accuracy in a variety of circumstances involving input photographs and targets. Experiments demonstrate that the suggested framework achieves great accuracy while balancing high uncertainty and sophistication on both sides: Public and self-collected underwater fish photos. Finally, the recognized fish type and medicinal uses are called out by utilizing voice instructions on MATLAB plateform.
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基于深度神经网络的鱼类识别
鱼类识别是渔业研究应用的各种要素,需要快速收集大量的事实。由于图像质量差,不可控的物体和环境,除了获取咨询样本的问题外,水下图像的普及也带来了特殊的挑战。本研究的主要目的是创建一个基于监督特征学习的鱼类识别框架。根据医疗和鱼市场的使用情况提供了进一步分析所需的数据。本工作中的系统模块使用深度神经网络构建。神经网络将在涉及输入照片和目标的各种情况下提高准确性。实验表明,所提出的框架在平衡高不确定性和复杂性的同时取得了很高的准确性:公开和自采集的水下鱼类照片。最后,利用MATLAB平台上的语音指令,呼出识别出的鱼类种类和药用。
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