Head Detection and Tracking by 2-D and 3-D Ellipsoid Fitting
نویسندگان
چکیده
A novel procedure for segmenting a set of scattered 3D data obtained from a head and shoulders multiview sequence is presented. The procedure consists of two steps. In the first step, two ellipses corresponding to the head and the body of the person are identified based on ellipse fitting of the outline of the person in each image. The fitting is based on a fast direct least squares method using the constraint that forces a general conic to be an ellipse. In order to achieve head/body segmentation, a K-means algorithm is used to minimise the fitting error between the points and the two ellipsoids. In the second step, a 3-D ellipsoid model corresponding to the head of the person is identified using an extension of the above method. Robustness and outlier removal can be achieved if 3-D ellipsoid model estimation technique is used in conjunction with the Median of Least Squares (MedLS) technique, which minimises the median of the errors corresponding to each 3-D point. An interesting application of the proposed method is the combination of the 3-D ellipsoid model with a generic face model which is adapted to the face images to provide information only for the high-detail front part of the head, while the 3-D ellipsoid is used for the back of the head, which is usually not visible.
منابع مشابه
Using 2-D and 3-D Ellipsoid Fitting for Head and Body Segmentation and Head Tracking
In this paper, a novel procedure is presented for segmenting a general 3-D wireframe model obtained from a head and shoulders multiview sequence. The procedure consists of two steps. In the rst step, two ellipses corresponding to the head and the body of the person are identi ed based on ellipse tting of the outline of the person in each image. The tting is based on a direct least squares metho...
متن کاملRobust Ellipsoidal Model Fitting of Human Heads
We report current work on methods for robust fitting of ellipsoids to the shape of the human head in three-dimensional models built from laser scanner acquisitions. A starting ellipsoid is obtained from Principal Component Analysis from mesh vertices; those regions far from the surface of the ellipsoid are penalized (outlier rejection and/or damping). A first method consists in re-calculating i...
متن کاملMultiple Target Tracking With a 2-D Radar Using the JPDAF Algorithm and Combined Motion Model
Multiple target tracking (MTT) is taken into account as one of the most important topics in tracking targets with radars. In this paper, the MTT problem is used for estimating the position of multiple targets when a 2-D radar is employed to gather measurements. To do so, the Joint Probabilistic Data Association Filter (JPDAF) approach is applied to tracking the position of multiple targets. To ...
متن کاملPerson Detection and Head Tracking to Detect Falls in Depth Maps
We present a system for fall detection in which the fall hypothesis, generated on the basis of accelerometric data, is validated by k-NN based classifier operating on depth features. We show that validation of the alarms in such a way leads to lower ratio of false alarms. We demonstrate the detection performance of the system using publicly available data. We discuss algorithms for person detec...
متن کاملL- and D-cysteine functionalized CdS quantum dots as nanosensors for detection of L-morphine and D-methamphetamine
A new method in differentiation of chiral molecules is reported based on the fluorescence quenching of functionalized CdS quantum dots (CdS-QDs) as nanosensor by differing in the chirality of functionalization species. The chemically functionalized CdS-QDs with strong yellow emission were prepared using chiral L-cysteine (L-Cyst) and D-cysteine (D-Cyst) molecules. Then, the functionalized CdS-Q...
متن کامل