We present a system to measure the ripeness of fruit with a hyperspectral camera and a suitable deep neural network architecture. This architecture did outperform competitive baseline models on the prediction of the ripeness state of fruit. For this, we recorded a data set of ripening avocados and kiwis, which we make public. We also describe the process of data collection in a manner that the adaption for other fruit is easy. The trained network is validated empirically, and we investigate the trained features. Furthermore, a technique is introduced to visualize the ripening process.
翻译:我们提出了一个用高光谱相机和合适的深神经网络结构来衡量水果成熟度的系统,这一结构的确在预测水果成熟度方面优于竞争基准模型,为此,我们记录了一套成熟的鳄梨和鱿鱼数据,并公布于众。我们还以易于适应其他水果的方式描述数据收集过程。经过培训的网络是经过经验验证的,我们调查了经过培训的特征。此外,我们引入了一种技术来直观成熟过程。