The conspicuity of different targets in image sequences taken by approaching sensors is addressed in applications such as the assessment of camouflage effectiveness or the performance evaluation of autonomous systems. In such evaluation processes the consideration of background characteristics is essential due to the propensity to confuse target and background signatures. Several discriminating features of target and background signature can be derived. Furthermore, the changing aspect and spatial resolution during an approach on a target have to be taken into account. Considering salient points in image sequences, we perform a nominal/actual value comparison by evaluating the receiver operating characteristic (ROC) curve for the detections in each image. Hence, reference regions for targets and backgrounds are provided for the entire image sequence by means of robust image registration. The consideration of the uncertainty for the temporal progression of the ROC curve enables hypothesis testing for well-founded statements about the significance of the determined distinctiveness of targets with respect to their background. The approach is neither restricted to images taken by IR sensors nor applicable to low level image analysis steps only, but can be considered as a general method for the assessment of feature evaluation and target distinctiveness. The analysis method proposed facilitates an objective comparison of object appearance with both, its relevant background and other targets, using different image analysis features. The feasibility and the usefulness of the approach are demonstrated with real data recorded with a FLIR sensor during a field trial on a bare and mock-up target
A main goal of this investigation is to extract local qualitative measurements of elementary turbulence effects on extended image objects from fast image sequences. These local measurements are a prerequisite for the relationship between the local turbulence level versus the degradation of specialized automatic processes and allow the selection of a specific image treatment (e.g. adequate object model) or the tuning (e.g. adaptive turbulence filtering) of an automatic image analysis process (e.g. object tracking). Results of the developed analysis methods on different sequences showing diverse image contents taken in a well known environment (desert test site, indoor experiments, simulation) under various conditions will be presented and discussed with respect to different applications (e.g. local C N 2 -estimation).
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