首页> 外国专利> ANALYSIS AND DEEP LEARNING MODELING OF SENSOR-BASED OBJECT DETECTION DATA IN BOUNDED AQUATIC ENVIRONMENTS

ANALYSIS AND DEEP LEARNING MODELING OF SENSOR-BASED OBJECT DETECTION DATA IN BOUNDED AQUATIC ENVIRONMENTS

机译:受限水环境中基于传感器的目标检测数据分析与深度学习建模

摘要

Techniques for analysis and deep learning modeling of sensor-based object detection data in bounded aquatic environments are described, including capturing an image from a sensor disposed substantially above a waterline, the sensor being housed in a structure electrically coupled to a light housing, converting the image into data, the data being digitally encoded, evaluating the data to separate background data from foreground data, generating tracking data from the data after the background data is removed, the tracking data being evaluated to determine whether a head or a body are detected by comparing the tracking data to classifier data, tracking the head or the body relative to the waterline if the head or the body are detected in the tracking data, and determining a state associated with the head or the body.
机译:描述了在有界水生环境中对基于传感器的目标检测数据进行分析和深度学习建模的技术,包括从基本上布置在水线上方的传感器捕获图像,将传感器封装在电耦合到灯壳的结构中,将图像转换为数据,对数据进行数字编码,评估数据以将背景数据与前景数据分离,在移除背景数据后从数据中生成跟踪数据,评估跟踪数据以通过将跟踪数据与分类器数据进行比较来确定是否检测到头部或身体,如果在跟踪数据中检测到头部或身体,则相对于水线跟踪头部或身体,以及确定与头部或身体相关联的状态。

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