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A Compressed and Accelerated SegNet for Plant Leaf Disease Segmentation: A Differential Evolution Based Approach

机译:用于植物叶片疾病分割的压缩和加速SEGNET:基于差分进化的方法

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SegNet is a Convolution Neural Network (CNN) architecture consisting of encoder and decoder for pixel-wise classification of input images. It was found to give better results than state of the art pixel-wise segmentation of images. In proposed work, a compressed version of SegNet has been developed using Differential Evolution for segmenting the diseased regions in leaf images. The compressed model has been evaluated on publicly available street scene images and potato late blight leaf images from PlantVillage dataset. Using the proposed method a compression of 25× times is achieved on original SegNet and inference time is reduced by 1.675× times without loss in mean IOU accuracy.
机译:SEGNET是一种卷积神经网络(CNN)架构,包括用于对输入图像的像素明智分类的编码器和解码器。 发现它比图像的艺术像素的状态的状态提供更好的结果。 在拟议的工作中,已经使用差分演进来开发了一定体的SEGNET的压缩版,以便在叶片图像中分割患病区域进行分割。 压缩模型已在公开可用的街景图像和土豆早期枯萎的叶片图像从Plantvillage DataSet进行了评估。 使用所提出的方法,在原始SEGNET上实现了25×次数的压缩,并且推测时间减少了1.675×倍而没有损失的平均iou精度。

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