Because of their abundance of amino acids, polysaccharides, and many other nutrients that benefit human beings, mushrooms are deservedly popular as dietary cuisine both worldwide and in China. However, if people eat poisonous fungi by mistake, they may suffer from nausea, vomiting, mental disorder, acute anemia, or even death. Each year in China, there are around 8000 people became sick, and 70 died as a result of eating toxic mushrooms by mistake. It is counted that there are thousands of kinds of mushrooms among which only around 900 types are edible, thus without specialized knowledge, the probability of eating toxic mushrooms by mistake is very high. Most people deem that the only characteristic of poisonous mushrooms is a bright colour, however, some kinds of them do not correspond to this trait. In order to prevent people from eating these poisonous mushrooms, we propose to use deep learning methods to indicate whether a mushroom is toxic through analyzing hundreds of edible and toxic mushrooms smartphone pictures. We crowdsource a mushroom image dataset that contains 250 images of poisonous mushrooms and 200 images of edible mushrooms. The Convolutional Neural Network (CNN) is a specialized type of artificial neural networks that use a mathematical operation called convolution in place of general matrix multiplication in at least one of their layers, which can generate a relatively precise result by analyzing a huge amount of images, and thus is very suitable for our research. The experimental results demonstrate that the proposed model has high credibility and can provide a decision-making basis for the selection of edible fungi, so as to reduce the morbidity and mortality caused by eating poisonous mushrooms. We also open source our hand collected mushroom image dataset so that peer researchers can also deploy their own model to advance poisonous mushroom identification.
翻译:但是,如果人们误食有毒的真菌,他们可能患上恶心、呕吐、精神失常、急性贫血,甚至死亡。中国每年大约有8000人因误食有毒蘑菇而生病,70人因误食有毒蘑菇而死亡。据统计,有成千上万种蘑菇,其中只有大约900种可以食用,因此没有专业知识,吃有毒蘑菇的机率很高。大多数人认为,毒蘑菇的唯一特征是亮色的,但是,某些种类的蘑菇可能与这种特征不相符。为了防止人们食用这些有毒蘑菇,我们建议使用深层次学习方法来表明蘑菇是否有毒,通过分析数百种可变型和有毒的蘑菇智能照片。我们还收集了含有250种有毒蘑菇图像的蘑菇,以及200种可调味的蘑菇的机率非常高。因此,通过实验室型的模型化模型和模型化模型,我们可以收集到一个高值的蘑菇图像。我们通过一个高层次的实验室模型,可以产生一个高层次的模型,而可以产生一个高层次的模型数据。