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Comparing deep-learning networks for apple fruit detection to classical hard-coded algorithms

机译:比较苹果果实检测的深度学习网络对古典硬编码算法

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During recent years, with the increase of production in agriculture, the need for more precise tools and practices has increased. One of those practices is the estimation of the fruit number in the tree. Computer vision techniques such as histogram oforiented gradients and edge/color detection have been used to extract features thus recognizing fruit based on shape and color. Existing methods usually rely heavily on computing multiple image features, making the whole system complex and computationally expensive. In this paper we compare those classical detection algorithms to new state-of-the-art convolution neural networks. Specifically, we compare two types of algorithms for apple detection in the tree. The first approach refereed as hard-coded uses commonly feature extraction filters (edge detector, color filtering, corners). On the other side are techniques using CNNs convolution neural networks like (residual networks, sliding window, regional dividers). More than thousand images of apple trees were taken during the season from flowering time to harvest. Same pictures have been processed through both techniques and based on results and the trade-offs of both techniques have been compared. For hard-coded algorithms, with few pictures we wereable to see the performance of algorithm, while with CNNs, huge number of labeled pictures were needed for the algorithm to be more than 50% accurate. However, when a different picture from another date or completely new cultivar was used, the hard-codedalgorithm failed to detect thus had to be rewritten to accommodate new changes. In other hand CNNs were very flexible and were able to detect apples even though the picture taken-date was changed or picture from another cultivar was used.
机译:近年来,随着农业生产的增加,需要更多精确的工具和实践。其中一个实践是树中果实数的估计。诸如直方图的梯度和边缘/颜色检测的计算机视觉技术已被用于提取特征,从而识别基于形状和颜色的果实。现有方法通常严重依赖于计算多个图像特征,使整个系统复杂和计算昂贵。在本文中,我们将那些经典的检测算法与新的最先进的卷积神经网络进行比较。具体来说,我们比较树中的两种类型的Apple检测算法。作为硬编码的第一种方法使用通常的特征提取滤波器(边缘检测器,滤色器,角)。在另一边是使用CNNS卷积神经网络的技术(剩余网络,滑动窗口,区域分隔线)。在季节,从开花时间拍摄了一千多种苹果树的图像。通过这两种技术处理了相同的图片,并基于结果,并比较了两种技术的权衡。对于硬编码算法,我们很快看到算法的性能,而CNNS的性能,则算法需要大量标记的图像,准确地超过50%。然而,当使用来自另一个日期或完全新的品种的不同图片时,必须重写硬信标记未能检测以适应新的变化。另一方面,CNN是非常灵活的并且能够检测苹果,即使图像呈现日期也被改变或从另一个品种的图像。

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