In weed control, precision agriculture can help to greatly reduce the use of herbicides, resulting in both economical and ecological benefits. A key element is the ability to locate and segment all the plants from image data. Modern instance segmentation techniques can achieve this, however, training such systems requires large amounts of hand-labelled data which is expensive and laborious to obtain. Weakly supervised training can help to greatly reduce labelling efforts and costs. We propose panoptic one-click segmentation, an efficient and accurate offline tool to produce pseudo-labels from click inputs which reduces labelling effort. Our approach jointly estimates the pixel-wise location of all N objects in the scene, compared to traditional approaches which iterate independently through all N objects; this greatly reduces training time. Using just 10% of the data to train our panoptic one-click segmentation approach yields 68.1% and 68.8% mean object intersection over union (IoU) on challenging sugar beet and corn image data respectively, providing comparable performance to traditional one-click approaches while being approximately 12 times faster to train. We demonstrate the applicability of our system by generating pseudo-labels from clicks on the remaining 90% of the data. These pseudo-labels are then used to train Mask R-CNN, in a semi-supervised manner, improving the absolute performance (of mean foreground IoU) by 9.4 and 7.9 points for sugar beet and corn data respectively. Finally, we show that our technique can recover missed clicks during annotation outlining a further benefit over traditional approaches.
翻译:在杂草控制中,精密农业可以帮助大大减少除草剂的使用,从而带来经济和生态效益。关键要素之一是能够从图像数据中找到和分割所有植物。现代分解技术可以做到这一点。但现代分解技术可以做到这一点,培训这类系统需要大量的手工标签数据,这些数据成本昂贵,而且难以获得。 微弱的监管培训可以帮助大大减少标签工作和成本。 我们建议采用泛光一击一击分割法,一个高效和准确的离线工具,从点击输入中生成假标签,从而减少标签工作。我们的方法共同估计了所有N目标在现场的像素定位,而传统方法则通过所有N目标独立循环的传统方法;这大大缩短了培训时间。只有10%的数据用于培训我们的全光一击分解方法,可以产生68.1%和68.8%的平均对象交叉点分别用于挑战性糖粒和玉米图像数据。我们提议采用与传统的一击法方法可比的性能,同时可以更快地训练12倍。我们展示了我们的系统是否适用性能性能,通过生成伪价标-N的精确度数据,然后将数据从精确的精确性能显示,然后将数据从正标用于精确的轨道上,然后将使用。</s>