• Title/Summary/Keyword: Active Sonar Classification

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Active Sonar Target/Nontarget Classification Using Real Sea-trial Data (실제 해상 실험 데이터를 이용한 능동소나 표적/비표적 식별)

  • Seok, J.W.
    • Journal of Korea Multimedia Society
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    • v.20 no.10
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    • pp.1637-1645
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    • 2017
  • Target/Nontarget classification can be divided into the study of shape estimation of the target analysing reflected echo signal and of type classification of the target using acoustical features. In active sonar system, the feature vectors are extracted from the signal reflected from the target, and an classification algorithm is applied to determine whether the received signal is a target or not. However, received sonar signals can be distorted in the underwater environments, and the spatio-temporal characteristics of active sonar signals change according to the aspect of the target. In addition, it is very difficult to collect real sea-trial data for research. In this paper, target/non-target classification were performed using real sea-trial data. Feature vectors are extracted using MFCC(Mel-Frequency Cepstral Coefficients), filterbank energy in the Fourier spectrum and wavelet domain. For the performance verification, classification experiments were performed using backpropagation neural network classifiers.

Active Sonar Target/Non-target Classification using Convolutional Neural Networks (CNN을 이용한 능동 소나 표적/비표적 분류)

  • Kim, Dongwook;Seok, Jongwon;Bae, Keunsung
    • Journal of Korea Multimedia Society
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    • v.21 no.9
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    • pp.1062-1067
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    • 2018
  • Conventional active sonar technology has relied heavily on the hearing of sonar operator, but recently, many techniques for automatic detection and classification have been studied. In this paper, we extract the image data from the spectrogram of the active sonar signal and classify the extracted data using CNN(convolutional neural networks), which has recently presented excellent performance improvement in the field of pattern recognition. First, we divided entire data set into eight classes depending on the ratio containing the target. Then, experiments were conducted to classify the eight classes data using proposed CNN structure, and the results were analyzed.

Signal Synthesis and Feature Extraction for Active Sonar Target Classification (능동소나 표적 인식을 위한 신호합성 및 특징추출)

  • Uh, Y.;Seok, J.W.
    • Journal of Korea Multimedia Society
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    • v.18 no.1
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    • pp.9-16
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    • 2015
  • Various approaches to process active sonar signals are under study, but there are many problems to be considered. The sonar signals are distorted by the underwater environment, and the spatio-temporal and spectral characteristics of active sonar signals change in accordance with the aspect of the target even though they come from the same one. And it has difficulties in collecting actual underwater data. In this paper, we synthesized active target echoes based on ray tracing algorithm using target model having 3-dimensional highlight distribution. Then, Fractional Fourier transform was applied to synthesized target echoes to extract feature vector. Recognition experiment was performed using probabilistic neural network classifier.

Analysis of target classification performances of active sonar returns depending on parameter values of SVM kernel functions (SVM 커널함수의 파라미터 값에 따른 능동소나 표적신호의 식별 성능 분석)

  • Park, Jeonghyun;Hwang, Chansik;Bae, Keunsung
    • Journal of the Korea Institute of Information and Communication Engineering
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    • v.17 no.5
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    • pp.1083-1088
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    • 2013
  • Detection and classification of undersea mines in shallow waters using active sonar returns is a difficult task due to complexity of underwater environment. Support vector machine(SVM) is a binary classifier that is well known to provide a global optimum solution. In this paper, classification experiments of sonar returns from mine-like objects and non-mine-like objects are carried out using the SVM, and classification performance is analyzed and presented with discussions depending on parameter values of SVM kernel functions.

Synthesis and Classification of Active Sonar Target Signal Using Highlight Model (하이라이트 모델을 이용한 능동소나 표적신호의 합성 및 인식)

  • Kim, Tae-Hwan;Park, Jeong-Hyun;Nam, Jong-Geun;Lee, Su-Hyung;Bae, Keun-Sung
    • The Journal of the Acoustical Society of Korea
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    • v.28 no.2
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    • pp.135-140
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    • 2009
  • In this paper, we synthesized active sonar target signals based on highlights model, and then carried out target classification using the synthesized signals. If the target aspect angle is changed, the different signals are synthesized. To know the result, two different experiments are done. First, The classification results with respect to each aspect angle are shown. Second, the results in two group in aspect angle are acquired. Time domain feature extraction is done using matched filter and envelope detection. It shows the pattern of each highlights. Artificial neural networks and multi-class SVM are used for classifying target signals.

Active Sonar Classification Algorithm based on HOG Feature (HOG 특징 기반 능동 소나 식별 기법)

  • Shin, Hyunhak;Park, Jaihyun;Ku, Bonhwa;Seo, Iksu;Kim, Taehwan;Lim, Junseok;Ko, Hanseok;Hong, Wooyoung
    • Journal of the Korea Institute of Military Science and Technology
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    • v.20 no.1
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    • pp.33-39
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    • 2017
  • In this paper, an effective feature which is capable of classifying targets among the detections obtained from 2D range-bearing maps generated in active sonar environments is proposed. Most conventional approaches for target classification with the 2D maps have considered magnitude of peak and statistical features of the area surrounding the peak. To improve the classification performance, HOG(Histogram of Gradient) feature, which is popular for their robustness in the image textures analysis is applied. In order to classify the target signal, SVM(Support Vector Machine) method with reduced HOG feature by the PCA(Principal Component Analysis) algorithm is incorporated. The various simulations are conducted with the real clutter signal data and the synthesized target signal data. According to the simulated results, the proposed method considering HOG feature is claimed to be effective when classifying the active sonar target compared to the conventional methods.

Underwater Acoustic Research Trends with Machine Learning: Active SONAR Applications

  • Yang, Haesang;Byun, Sung-Hoon;Lee, Keunhwa;Choo, Youngmin;Kim, Kookhyun
    • Journal of Ocean Engineering and Technology
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    • v.34 no.4
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    • pp.277-284
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    • 2020
  • Underwater acoustics, which is the study of phenomena related to sound waves in water, has been applied mainly in research on the use of sound navigation and range (SONAR) systems for communication, target detection, investigation of marine resources and environments, and noise measurement and analysis. The main objective of underwater acoustic remote sensing is to obtain information on a target object indirectly by using acoustic data. Presently, various types of machine learning techniques are being widely used to extract information from acoustic data. The machine learning techniques typically used in underwater acoustics and their applications in passive SONAR systems were reviewed in the first two parts of this work (Yang et al., 2020a; Yang et al., 2020b). As a follow-up, this paper reviews machine learning applications in SONAR signal processing with a focus on active target detection and classification.

Target/non-target classification using active sonar spectrogram image and CNN (능동소나 스펙트로그램 이미지와 CNN을 사용한 표적/비표적 식별)

  • Kim, Dong-Wook;Seok, Jong-Won;Bae, Keun-Sung
    • Journal of IKEEE
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    • v.22 no.4
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    • pp.1044-1049
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    • 2018
  • CNN (Convolutional Neural Networks) is a neural network that models animal visual information processing. And it shows good performance in various fields. In this paper, we use CNN to classify target and non-target data by analyzing the spectrogram of active sonar signal. The data were divided into 8 classes according to the ratios containing the targets and used for learning CNN. The spectrogram of the signal is divided into frames and used as inputs. As a result, it was possible to classify the target and non-target using the characteristic that the classification results of the seven classes corresponding to the target signal sequentially appear only at the position of the target signal.

Simulator for Active Sonar Target Recognition (능동소나 표적인식을 위한 시뮬레이터)

  • Seok, Jongwon;Kim, Taehwan;Bae, Keunsung
    • Journal of the Korea Institute of Information and Communication Engineering
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    • v.16 no.10
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    • pp.2137-2142
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    • 2012
  • Many studies in detection and classification of the targets in the underwater environments have been conducted for military purposes, as well as for non-military purpose. Due to the complicated characteristics of underwater acoustic signal reflecting multipath environments and spatio-temporal varying characteristics, active sonar target classification technique has been considered as a difficult technique. And it has a difficult in collecting actual underwater data. In this paper, we implemented the simulator to synthesize the active target signal, to extract feature and to classify the target in the underwater environment. In target signal synthesis, highlight and three-dimensional model are used and multi-aspect based hidden markov model is used for target classification.

Ensemble Learning for Underwater Target Classification (수중 표적 식별을 위한 앙상블 학습)

  • Seok, Jongwon
    • Journal of Korea Multimedia Society
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    • v.18 no.11
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    • pp.1261-1267
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    • 2015
  • The problem of underwater target detection and classification has been attracted a substantial amount of attention and studied from many researchers for both military and non-military purposes. The difficulty is complicate due to various environmental conditions. In this paper, we study classifier ensemble methods for active sonar target classification to improve the classification performance. In general, classifier ensemble method is useful for classifiers whose variances relatively large such as decision trees and neural networks. Bagging, Random selection samples, Random subspace and Rotation forest are selected as classifier ensemble methods. Using the four ensemble methods based on 31 neural network classifiers, the classification tests were carried out and performances were compared.