Abstract
BackgroundImage‐based automatic diagnosis of field diseases can help increase crop yields and is of great importance. However, crop lesion regions tend to be scattered and of varying sizes, this along with substantial intra‐class variation and small inter‐class variation makes segmentation difficult.MethodsWe propose a novel end‐to‐end system that only requires weak supervision of image‐level labels for lesion region segmentation. First, a two‐branch network is designed for joint disease classification and seed region generation. The generated seed regions are then used as input to the next segmentation stage where we design to use an encoder‐decoder network. Different from previous works that use an encoder in the segmentation network, the encoder‐decoder network is critical for our system to successfully segment images with small and scattered regions, which is the major challenge in image‐based diagnosis of field diseases. We further propose a novel weakly supervised training strategy for the encoder‐decoder semantic segmentation network, making use of the extracted seed regions.ResultsExperimental results show that our system achieves better lesion region segmentation results than state of the arts. In addition to crop images, our method is also applicable to general scattered object segmentation. We demonstrate this by extending our framework to work on the PASCAL VOC dataset, which achieves comparable performance with the state‐of‐the‐art DSRG (deep seeded region growing) method.ConclusionOur method not only outperforms state‐of‐the‐art semantic segmentation methods by a large margin for the lesion segmentation task, but also shows its capability to perform well on more general tasks.
Highlights
Crop diseases seriously affect the quantity and quality of crop yields, causing huge economic losses and posing a serious threat to global food security [1]
Early diagnosis of crop diseases, which helps to avoid the heavy use of chemicals and provides feasible solutions, is much desired
By introducing a fast conditional-random-field (CRF) supervision inspired by the seed-expand-and-constrain (SEC) method [27], we demonstrate our method on the PASCAL VOC dataset [31]
Summary
Crop diseases seriously affect the quantity and quality of crop yields, causing huge economic losses and posing a serious threat to global food security [1]. Traditional agriculture relies on heavy use of chemicals such as fungicides and insecticides to control crop diseases. Early diagnosis of crop diseases, which helps to avoid the heavy use of chemicals and provides feasible solutions, is much desired. The identification of crop diseases and the assessment of the infection severity are based on naked eye observation. These manual methods are time-consuming and laborious, and inaccurate in estimated results. Specially designed computer techniques that can achieve automatic diagnosis of crop diseases are very important. Image-based automatic diagnosis of field diseases can help increase crop yields and is of great importance. Crop lesion regions tend to be scattered and of varying sizes, this along with substantial intra-class variation and small inter-class variation makes segmentation difficult
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