Modern data-driven machine learning research that enables revolutionary advances in image analysis has now become a critical tool to redefine how skin lesions are documented, mapped, and tracked. We propose a 3D whole body imaging prototype to enable automated evaluation and mapping of skin lesions. A modular camera rig arranged in a cylindrical configuration is designed to automatically capture synchronised images from multiple angles for entire body scanning. We develop algorithms for 3D body image reconstruction, data processing and skin lesion detection based on deep convolutional neural networks. We also propose a customised, intuitive and flexible interface that allows the user to interact and collaborate with the machine to understand the data. The experimental results using synthetic and real images demonstrate the effectiveness of the proposed solution by providing multiple views of the target skin lesion, enabling further 3D geometry analysis. Skin lesions are identified as outliers which deserve more attention from a skin cancer physician. Our detector leverage expert annotated labels to learn representations of each lesion, while capturing the effects of anatomical variability. The time needed for recording skin information is reduced to just a few seconds, although about half an hour more is needed to process the capture information to high quality information. The proposed 3D whole body imaging system can be used by dermatological clinics, allowing for fast documentation of lesions, quick and accurate analysis of the entire body to detect suspicious lesions. Because of its automated examination, the method might be used for screening or epidemiological investigations. With shorted time required for recording high quality skin information, doctors could have more time and more detailed information to provide better quality treatment.
翻译:现代数据驱动的机器学习研究,使得图像分析的革命性进步成为了重新定义皮肤损伤如何记录、绘图和跟踪的关键工具。我们提议3D整体成像原型原型,以便能够对皮肤损伤进行自动评估和绘图。以圆柱形结构配置安排的模块化照相机平台旨在自动从多个角度获取同步图像,供整个身体扫描。我们根据深层神经神经网络,为3D身体图像重建、数据处理和皮肤损伤检测制定算法。我们还提议一个定制、直观和灵活的界面,使用户能够与机器互动和合作,以了解数据。使用合成和真实图像的实验结果通过提供目标皮肤损伤的多重观点来显示拟议解决方案的有效性,从而能够进行进一步的3D地理测量分析。皮肤损伤被确定为外部外科,需要皮肤癌医生专家加注解标签,以了解每个病变的描述,同时捕捉解解解解解剖结果的影响。记录皮肤信息所需要的时间将减少到几秒钟,使用合成和真实的图像的实验结果将更精确性信息压缩到半个小时,需要快速的系统进行快速的测量分析。为了快速记录,可以使用快速的系统,需要更快速的系统,快速记录,需要更快速地记录。