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Eigen Vectors based Rotation Invariant Multi-Object Deep Detector

机译:基于特征向量的旋转不变多目标深度检测器

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In this paper, we propose an accurate, scalable data-free approach based on eigenvectors and Convolutional Neural Networks (CNNs) for rotated object detection. Detecting an arbitrarily diverted object poses a challenging problem, as features extracted by CNNs are variant to small changes in shift and scale. They lack in performance for images at orientation different from input data. Hence, we introduce a novel two-step architecture, which detects multiple objects at any angle in an image efficiently. We utilize eigenvector analysis on the input image based on bright pixel distribution. The vertical and horizontal vectors are used as a reference to detect the deviation of an image from the original orientation. This analysis gives four orientations of the input image which, that pass through a pre-trained YOLOv3 with proposed decision criteria. Our approach referred to as "Eigen Vectors based Rotation Invariant Multi-Object Deep Detector" (EVRI-MODD), produces rotation invariant detection without any additional training on augmented data and also determines actual image orientation without any prior information. The proposed network achieves high performance on Pascal-VOC 2012 dataset. We evaluate our network performance on three differently rotated angles, 90°, 180°, and 270°, and achieves a significant gain in accuracy by 48%, 50%, and 47% respectively, over YOLOv3.
机译:在本文中,我们提出了一种基于特征向量和卷积神经网络(CNN)的准确,可扩展的无数据方法,用于旋转目标检测。由于CNN提取的特征会随着位移和比例的微小变化而变化,因此检测到任意转向的物体会带来一个具有挑战性的问题。它们缺乏针对与输入数据不同方向的图像的性能。因此,我们介绍了一种新颖的两步体系结构,该体系结构可有效检测图像中任何角度的多个对象。我们基于明亮像素分布对输入图像进行特征向量分析。垂直和水平向量用作检测图像与原始方向的偏差的参考。该分析给出了输入图像的四个方向,这些方向通过带有建议决策标准的预训练YOLOv3。我们的方法被称为“基于特征向量的旋转不变多目标深度检测器”(EVRI-MODD),无需对增强数据进行任何额外训练即可产生旋转不变检测,并且无需任何先验信息即可确定实际图像方向。所提出的网络在Pascal-VOC 2012数据集上实现了高性能。我们在三个不同的旋转角度90°,180°和270°上评估了我们的网络性能,与YOLOv3相比,其准确度分别显着提高了48%,50%和47%。

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