Proceedings Article | 11 May 2012
KEYWORDS: Mining, Land mines, Infrared radiation, Infrared imaging, Infrared detectors, Cameras, Detection and tracking algorithms, Passive remote sensing, Visibility, Binary data
Automatic detection of
oating mines by passive sensing is of major interest, yet remains a hard problem. In
this paper, we propose an algorithm to detect them in infrared sequences, based on their geometry, provided by
spatial derivatives. In infrared images,
oating mines contrast with the sea due to the dierence of emissivity at
low incidence angles: they form bright elliptical areas. Using the available data and the geometry of our camera,
we rst determine the scales of interest, which represent the possible size of mines in number of pixels. Then, we
use a temporal and a morphological lter to perform smoothing in the time dimension and contrast enhancement
in the space dimensions, at the selected scales, and calculate for every pixel the Hessian matrix, composed of the
second order derivatives, which are estimated in the classical scale-space framework, by convolving the image
with derivatives of Gaussian. Based on the eigenvalues of the Hessian matrix, representing the curvatures along
the principal directions of the image, we dene two parameters describing the eccentricity of an elliptical area and
the contrast with sea, and propose a measure of mine-likeliness" that will be high for bright elliptical regions
with selected eccentricy. At the end, we only retain pixels with high mine-likeliness, stable in time, as potential
mines. Using a dataset of 10 sequences with ground truth, we evaluated the performance and stability of our
algorithm, and obtained a precision between 80% and 100%, and a per-frame recall between 30% and 100%,
depending on the diculty of the scenarios.