Agriculture plays an important role in the food and economy of Bangladesh. The rapid growth of population over the years also has increased the demand for food production. One of the major reasons behind low crop production is numerous bacteria, virus and fungal plant diseases. Early detection of plant diseases and proper usage of pesticides and fertilizers are vital for preventing the diseases and boost the yield. Most of the farmers use generalized pesticides and fertilizers in the entire fields without specifically knowing the condition of the plants. Thus the production cost oftentimes increases, and, not only that, sometimes this becomes detrimental to the yield. Deep Learning models are found to be very effective to automatically detect plant diseases from images of plants, thereby reducing the need for human specialists. This paper aims at building a lightweight deep learning model for predicting leaf disease in tomato plants. By modifying the region-based convolutional neural network, we design an efficient and effective model that demonstrates satisfactory empirical performance on a benchmark dataset. Our proposed model can easily be deployed in a larger system where drones take images of leaves and these images will be fed into our model to know the health condition.
翻译:多年来,农业在孟加拉国的粮食和经济中发挥着重要的作用。农业的迅速增长也增加了对粮食生产的需求。低作物产量的主要原因之一是许多细菌、病毒和真菌植物疾病。及早发现植物疾病以及适当使用杀虫剂和化肥对于预防疾病和增加产量至关重要。大多数农民在不具体了解植物状况的情况下,在整个田间使用普遍杀虫剂和化肥。因此生产成本往往会增加,而不仅如此,有时会损害产量。深层次学习模型被认为对从植物图像中自动检测植物疾病非常有效,从而减少了人类专家的需求。本文的目的是建立一个轻量的深度学习模型,用于预测番茄植物中的叶病。通过改变以区域为基础的共生神经网络,我们设计了一个高效和有效的模型,在基准数据集上展示令人满意的实证性表现。我们提议的模型可以很容易地在更大的系统中部署,无人驾驶飞机摄取叶子图像,这些图像将被纳入我们的模型,以了解健康状况。</s>