Shanghai Key Laboratory of Multidimensional Information Processing, East China Normal University, Shanghai 200241, China.
School of Statistics, East China Normal University, Shanghai 200241, China.
Sensors (Basel). 2020 Jan 31;20(3):782. doi: 10.3390/s20030782.
Advancement in science and technology is playing an increasingly important role in solving difficult cases at present. Thermal cameras can help the police crack difficult cases by capturing the heat trace on the ground left by perpetrators, which cannot be spotted by the naked eye. Therefore, the purpose of this study is to establish a thermalfoot model using thermal imaging system to estimate the departure time. To this end, in the current work, we use a thermal camera to acquire the thermal sequence left on the floor, and convert it into the heat signal via image processing algorithm. We establish the model of thermalfoot print as we observe that the residual temperature would exponentially decrease with the departure time according to Newton's Law of Cooling. The correlation coefficients of 107 thermalfoot models derived from the corresponding 107 heat signals are basically above 0.99. In a validation experiment, a residual analysis is conducted and the residuals between estimated departure time points and ground-truth times are almost within a certain range from -150 s to +150 s. The reverse accuracy of the thermalfoot model for estimating departure time at one-third, one-half, two-thirds, three-fourths, four-fifths, and five-sixths capture time points are 71.96%, 50.47%, 42.06%, 31.78%, 21.70%, and 11.21%, respectively. The results of comparison experiments with two subjective evaluation methods (subjective 1: we directly estimate the departure time according to obtained local curves; subjective 2: we utilize auxiliary means such as a ruler to estimate the departure time based on obtained local curves) further demonstrate the effectiveness of thermalfoot model for detecting the departure time inversely. Experimental results also demonstrated that the thermalfoot model has good performance on the departure time reversal within a short time window someone leaves, whereas it is probably only approximately 15% to accurately determine the departure time via thermalfoot model within a long time window someone leaves. The influence of outliers, ROI (Region of Interest) selection, ROI size, different capture time points and environment temperature on the performance of thermalfoot model on departure time reversal can be explored in the future work. Overall, the thermalfoot model can help the police solve crimes to some extent, which in turn brings more guarantees for people's health, social security, and stability.
目前,科学技术的进步在解决疑难案件方面发挥着越来越重要的作用。热像仪可以通过捕捉犯罪者在地面上留下的热迹,帮助警方侦破疑难案件,这些热迹是肉眼无法察觉的。因此,本研究的目的是建立一个使用热成像系统的热足迹模型,以估计离开时间。为此,在目前的工作中,我们使用热像仪获取地板上留下的热序列,并通过图像处理算法将其转换为热信号。我们观察到,根据牛顿冷却定律,残余温度会随着离开时间呈指数下降,从而建立热足迹模型。从相应的 107 个热信号中得出的 107 个热足迹模型的相关系数基本上都在 0.99 以上。在验证实验中,进行了残差分析,估计离开时间点和实际时间点之间的残差几乎在-150s 到+150s 的一定范围内。热足迹模型对三分之一、二分之一、三分之二、四分之三、五分之四和六分之五捕获时间点的反向估计离开时间的准确率分别为 71.96%、50.47%、42.06%、31.78%、21.70%和 11.21%。与两种主观评价方法(主观 1:直接根据获得的局部曲线估计离开时间;主观 2:根据获得的局部曲线,利用尺子等辅助手段估计离开时间)的比较实验结果进一步证明了热足迹模型在反向检测离开时间方面的有效性。实验结果还表明,热足迹模型在人离开的短时间窗口内对离开时间的反转具有良好的性能,而在人离开的长时间窗口内,通过热足迹模型准确确定离开时间的可能性可能只有大约 15%。在未来的工作中,可以探讨离群值、感兴趣区域(ROI)选择、ROI 大小、不同捕获时间点和环境温度对热足迹模型在离开时间反转性能上的影响。总的来说,热足迹模型可以在一定程度上帮助警方破案,从而为人们的健康、社会安全和稳定带来更多保障。