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Fine-grained visual marine vessel classification for coastal surveillance and defense applications

机译:用于沿海监视和国防应用的细粒度视觉海洋船舶分类

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The need for capabilities of automated visual content analysis has substantially increased due to presence of large number of images captured by surveillance cameras. With a focus on development of practical methods for extracting effective visual data representations, deep neural network based representations have received great attention due to their success in visual categorization of generic images. For fine-grained image categorization, a closely related yet a more challenging research problem compared to generic image categorization due to high visual similarities within subgroups, diverse applications were developed such as classifying images of vehicles, birds, food and plants. Here, we propose the use of deep neural network based representations for categorizing and identifying marine vessels for defense and security applications. First, we gather a large number of marine vessel images via online sources grouping them into four coarse categories; naval, civil, commercial and service vessels. Next, we subgroup naval vessels into fine categories such as corvettes, frigates and submarines. For distinguishing images, we extract state-of-the-art deep visual representations and train support-vector-machines. Furthermore, we fine tune deep representations for marine vessel images. Experiments address two scenarios, classification and verification of naval marine vessels. Classification experiment aims coarse categorization, as well as learning models of fine categories. Verification experiment embroils identification of specific naval vessels by revealing if a pair of images belongs to identical marine vessels by the help of learnt deep representations. Obtaining promising performance, we believe these presented capabilities would be essential components of future coastal and on-board surveillance systems.
机译:由于监视摄像机捕获了大量图像,对自动视觉内容分析功能的需求已大大增加。随着对提取有效视觉数据表示的实用方法的关注,基于深度神经网络的表示由于在通用图像的视觉分类中取得了成功而受到了极大的关注。对于细粒度的图像分类,由于子组内部的高度视觉相似性,与通用图像分类相比,这是一个与之密切相关但更具挑战性的研究问题,因此开发了多种应用程序,例如对车辆,鸟类,食物和植物的图像进行分类。在这里,我们建议使用基于深度神经网络的表示法对国防和安全应用中的船舶进行分类和识别。首先,我们通过在线来源收集了大量的船舶图像,将其分为四个粗略类别;海军,民用,商业和服务船。接下来,我们将海军舰艇细分为轻型舰艇,护卫舰和潜艇。为了区分图像,我们提取了最先进的深层视觉表示并训练了支持向量机。此外,我们微调了船舶图像的深度表示。实验针对两种情况,即海军舰船的分类和验证。分类实验的目标是粗分类,以及细分类的学习模型。验证实验借助学到的深层表示方法揭示一对图像是否属于同一艘船舶,从而使特定海军舰船的识别陷入困境。获得令人鼓舞的性能,我们相信这些展示的功能将是未来沿海和机载监视系统的重要组成部分。

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