声呐回声的鱼类识别——预处理和并行网络

N. Ramani, W.G. Hanson, P. Patrick, H. Anderson
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引用次数: 1

摘要

环境法规要求安大略省水电公司进行一系列水生调查,以监测发电站附近的鱼类种群。目前正在进行研究,试图用基于声纳的方法取代目前用于调查的网法,这种方法既不消耗资源又便宜。作者着眼于使用多层感知器从声纳回波中识别鱼类。当前阶段的工作是研究预处理技术和并行网络对泛化特性的影响。研究发现,使用三层感知器的简单组合可以显著改进,这些感知器使用来自不同预处理器的输出进行训练。在研究的测试案例中,超过93%的目标被网络正确识别。
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Fish identification from sonar echoes-preprocessing and parallel networks
Environmental regulations require Ontario Hydro to conduct a series of aquatic surveys to monitor fish population in the neighbourhoods of the generating stations. Studies are currently under way in an attempt to replace the current netting methods used for the survey with sonar based methods which will be nonconsumptive as well as less expensive. The authors look at the use of multi-layer perceptrons to identify the fish from their sonar echoes. The current phase of the work investigates the impact of preprocessing techniques and the use of networks in parallel on the generalization properties. It is found that significant improvements are possible using simple combinations of three-layer perceptrons which have been trained using outputs from different preprocessors. In the test case studied, over 93 percent of the targets were identified correctly by the network.<>
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