The thighbone is the largest bone supporting the lower body. If the thighbone fracture is not treated in time, it will lead to lifelong inability to walk. Correct diagnosis of thighbone disease is very important in orthopedic medicine. Deep learning is promoting the development of fracture detection technology. However, the existing computer aided diagnosis (CAD) methods baesd on deep learning rely on a large number of manually labeled data, and labeling these data costs a lot of time and energy. Therefore, we develop a object detection method with limited labeled image quantity and apply it to the thighbone fracture localization. In this work, we build a semi-supervised object detection(SSOD) framework based on single-stage detector, which including three modules: adaptive difficult sample oriented (ADSO) module, Fusion Box and deformable expand encoder (Dex encoder). ADSO module takes the classification score as the label reliability evaluation criterion by weighting, Fusion Box is designed to merge similar pseudo boxes into a reliable box for box regression and Dex encoder is proposed to enhance the adaptability of image augmentation. The experiment is conducted on the thighbone fracture dataset, which includes 3484 training thigh fracture images and 358 testing thigh fracture images. The experimental results show that the proposed method achieves the state-of-the-art AP in thighbone fracture detection at different labeled data rates, i.e. 1%, 5% and 10%. Besides, we use full data to achieve knowledge distillation, our method achieves 86.2% AP50 and 52.6% AP75.
翻译:大腿骨是支撑下体的最大骨骼。 如果大腿骨骨骨骨骨折没有及时处理, 它将导致终身无法行走。 正确诊断大腿骨疾病在整形医学中非常重要。 深层学习正在推动骨折检测技术的发展。 但是, 现有的计算机辅助诊断方法( CAD) 依靠深层学习来支撑。 大量手工标签数据, 并标注这些数据花费大量的时间和能量。 因此, 我们开发了一种有标签的图像数量有限的物体检测方法, 并将其应用于大腿骨骨折本地化。 在这项工作中, 我们根据单阶段检测器, 建立半监督的刀骨病检测框架。 包括三个模块: 适应性难选样( ADSO) 模块、 Fusion Box (CADADADADADADAD) 模块将分类评分作为标签可靠性评估标准, Fusion Box 设计了类似的假体框, 用于胸口回归和胸骨折体骨折体骨折体的可靠框框框, 6 和Dexcoderderderder2 将用来实现图像增强的适应。 i- i- grealtradeal 584 数据测试数据是提议的, 3 。 测试数据, 。