Fast CNN surveillance pipeline for fine-grained vessel classification and detection in maritime scenarios

Fouad Bousetouane, B. Morris
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引用次数: 21

Abstract

Deep convolutional neural networks (CNNs) have proven very effective for many vision benchmarks in object detection and classification tasks. However, the computational complexity and object resolution requirements of CNNs limit their applicability in wide-view video surveillance settings where objects are small. This paper presents a CNN surveillance pipeline for vessel localization and classification in maritime video. The proposed pipeline is build upon the GPU implementation of Fast-R-CNN with three main steps:(1) Vessel filtering and regions proposal using low-cost weak object detectors based on hand-engineered features. (2) Deep CNN features of the candidates regions are computed with one feed-forward pass from the high-level layer of a fine-tuned VGG16 network. (3) Fine-grained classification is performed using CNN features and a support vector machine classifier with linear kernel for object verification. The performance of the proposed pipeline is compared with other popular CNN architectures with respect to detection accuracy and evaluation speed. The proposed approach mAP of 61.10% was the comparable with Fast-R-CNN but with a 10× speed up (on the order of Faster-R-CNN) on the new Annapolis Maritime Surveillance Dataset.
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用于海事场景中细粒度船舶分类和检测的快速CNN监控管道
深度卷积神经网络(cnn)在目标检测和分类任务的许多视觉基准测试中被证明是非常有效的。然而,cnn的计算复杂度和对目标分辨率的要求限制了其在物体较小的大视场视频监控环境中的适用性。提出了一种用于海事视频中船舶定位分类的CNN监控管道。提出的管道是建立在Fast-R-CNN的GPU实现上的,主要有三个步骤:(1)使用基于手工设计特征的低成本弱目标检测器进行容器滤波和区域提议。(2)候选区域的深度CNN特征通过一个来自微调后的VGG16网络高层的前馈通道来计算。(3)使用CNN特征和具有线性核的支持向量机分类器进行细粒度分类,用于对象验证。在检测精度和评估速度方面,将该管道的性能与其他流行的CNN架构进行了比较。在新的安纳波利斯海事监视数据集上,所提出的方法mAP为61.10%,与Fast-R-CNN相当,但速度提高了10倍(在Faster-R-CNN的数量级上)。
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