论文标题
Mkanet:一个具有SOBEL边界损失的轻量级网络,用于有效的卫星遥感图像的土地覆盖分类
MKANet: A Lightweight Network with Sobel Boundary Loss for Efficient Land-cover Classification of Satellite Remote Sensing Imagery
论文作者
论文摘要
土地覆盖分类是一项多级分割任务,将每个像素分类为地球表面的某些自然或人为的类别,例如水,土壤,自然植被,农作物和人类基础设施。受硬件计算资源和内存能力的限制,大多数现有研究通过将它们放置或将其裁剪成小于512*512像素的小斑点,从而预处理原始遥感图像,然后将它们发送到深神经网络。但是,下调图像会导致空间细节损失,使小部分难以区分,并扭转了数十年来努力获得的空间分辨率进度。将图像裁切成小斑块会导致远程上下文信息的丢失,并将预测的结果恢复为原始尺寸会带来额外的延迟。为了响应上述弱点,我们提出了称为Mkanet的有效的轻巧的语义分割网络。 Mkanet针对顶视图高分辨率遥感图像的特征,利用共享内核同时且同样处理不一致的尺度的地面段,还采用了平行和浅层的架构来提高推理速度和友好的支持速度和友好的支持图像贴片超过10倍以上。为了增强边界和小部分区分,我们还提出了一种捕获类别杂质区域的方法,利用边界信息并对边界和小部分错误判断施加额外的惩罚。广泛实验的视觉解释和定量指标都表明,Mkanet在两个土地覆盖分类数据集上获得最先进的精度,并且比其他竞争性轻量级网络快2倍。所有这些优点凸显了Mkanet在实际应用中的潜力。
Land cover classification is a multi-class segmentation task to classify each pixel into a certain natural or man-made category of the earth surface, such as water, soil, natural vegetation, crops, and human infrastructure. Limited by hardware computational resources and memory capacity, most existing studies preprocessed original remote sensing images by down sampling or cropping them into small patches less than 512*512 pixels before sending them to a deep neural network. However, down sampling images incurs spatial detail loss, renders small segments hard to discriminate, and reverses the spatial resolution progress obtained by decades of years of efforts. Cropping images into small patches causes a loss of long-range context information, and restoring the predicted results to their original size brings extra latency. In response to the above weaknesses, we present an efficient lightweight semantic segmentation network termed MKANet. Aimed at the characteristics of top view high-resolution remote sensing imagery, MKANet utilizes sharing kernels to simultaneously and equally handle ground segments of inconsistent scales, and also employs parallel and shallow architecture to boost inference speed and friendly support image patches more than 10X larger. To enhance boundary and small segments discrimination, we also propose a method that captures category impurity areas, exploits boundary information and exerts an extra penalty on boundaries and small segment misjudgment. Both visual interpretations and quantitative metrics of extensive experiments demonstrate that MKANet acquires state-of-the-art accuracy on two land-cover classification datasets and infers 2X faster than other competitive lightweight networks. All these merits highlight the potential of MKANet in practical applications.