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Accurate object recognition in the underwater images using learning algorithms and texture features

机译:使用学习算法和纹理特征在水下图像中进行准确的物体识别

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摘要

Underwater image processing is very challenging due to its environmental conditions and poor sunlight. Images captured from the ocean using autonomous vehicles are often non-uniformly illuminated and contain noise due to the underlying environment. Object recognition is a challenging task under water due to the variation in the environment, target shape and orientation. Traditional algorithms based on spatial information may not lead to accurate segmentation as the intensity variation is often less in underwater images. Texture information representing the characteristics of the object is needed. Statistical features like autocorrelation, sum average, sum variance and sum entropy were extracted. These were fed as input to learning algorithms and training was done to effectively classify the object of interest and background. Chain coding was further applied for object recognition. The proposed methodology achieved a maximum classification accuracy of 96%.
机译:由于其环境条件和恶劣的阳光,水下图像处理非常具有挑战性。使用自动驾驶汽车从海洋捕获的图像通常会受到不均匀的照明,并且由于底层环境而包含噪声。由于环境,目标形状和方向的变化,水下物体识别是一项艰巨的任务。基于空间信息的传统算法可能不会导致准确的分割,因为在水下图像中强度变化通常较小。需要表示对象特征的纹理信息。提取自相关,和平均值,和方差和和熵等统计特征。这些被输入作为学习算法的输入,并且进行了训练以有效地对感兴趣的对象和背景进行分类。链编码被进一步应用于物体识别。所提出的方法实现了96%的最大分类精度。

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