The present disclosure relates generally to tracking of individuals and, in some embodiments, to the use of tracking data to infer user interest and enhance user experience in interactive advertising contexts.
Advertising of products and services is ubiquitous. Billboards, signs, and other advertising media compete for the attention of potential customers. Recently, interactive advertising displays that encourage user involvement have been introduced. While advertising is prevalent, it may be difficult to determine the efficacy of particular forms of advertising. For example, it may be difficult for an advertiser (or a client paying the advertiser) to determine whether a particular advertisement is effectively resulting in increased sales or interest in the advertised product or service. This may be particularly true of signs or interactive advertising displays. Because the effectiveness of advertising in drawing attention to, and increasing sales of, a product or service is important in deciding the value of such advertising, there is a need to better evaluate and determine the effectiveness of advertisements provided in such manners.
Certain aspects commensurate in scope with the originally claimed invention are set forth below. It should be understood that these aspects are presented merely to provide the reader with a brief summary of certain forms various embodiments of the presently disclosed subject matter might take and that these aspects are not intended to limit the scope of the invention. Indeed, the invention may encompass a variety of aspects that may not be set forth below.
The present disclosure relates to a method for jointly tracking a gaze direction and a body pose direction of a person, independent of a motion direction of the person, passing an advertising station displaying advertising content via at least one fixed camera and a plurality of Pan-Tilt-Zoom (PTZ) cameras in an unconstrained environment based on captured image data acquired by the at least one fixed camera and each of the plurality of PTZ cameras. The at least one fixed camera is configured to detect the person passing the advertising station, and the plurality of PTZ cameras is configured to detect the gaze direction and the body pose direction independent of the motion direction of the person passing the advertising station. The method also includes processing, via a data-processing computer system including a processor, the captured image data using a combination of sequential Monte Carlo filtering and Markov chain Monte Carlo (MCMC) sampling to generate an inferred interest level of the person in the advertising content displayed by the advertising station. The method further includes updating the advertising content displayed by the advertising station in real time via the data-processing computer system in response to the inferred interest level of the person passing the advertising station.
The present disclosure also relates to a method for jointly tracking a gaze direction and a body pose direction of a person, independent of a motion direction of the person, passing an advertising display of an advertising station displaying advertising content based on captured image data. The captured image data includes images from at least one fixed camera and additional images from a plurality of Pan-Tilt-Zoom (PTZ) cameras, where the at least one fixed camera is configured to detect the person passing the advertising display based on the images, and the plurality of PTZ cameras is configured to detect the gaze direction and the body pose direction of the person passing the advertising display based on the additional images. The method also includes processing, via a data-processing computer system including a processor, the captured image data using a combination of sequential Monte Carlo filtering and Markov chain Monte Carlo (MCMC) sampling to determine an inferred interest level of the person in the advertising content displayed on the advertising display as the person passes the advertising display. The method further includes updating the advertising content displayed on the advertising display in real time via the data-processing computer system in response to the inferred interest level of the person passing the advertising display.
The present disclosure also relates to a manufacture including one or more non-transitory, computer-readable media having executable instructions stored thereon. The executable instructions include instructions configured to jointly track a gaze direction and a body pose direction of a person, independent of a motion direction of the person, passing an advertising station displaying advertising content based on captured image data from at least one fixed camera and each of a plurality of Pan-Tilt-Zoom (PTZ) cameras. The at least one fixed camera is configured to detect the person passing the advertising station, and the plurality of PTZ cameras is configured to detect the gaze direction and the body pose direction independent of the motion direction of the person passing the advertising station. The executable instructions also include instructions configured to analyze the captured image data using a combination of Sequential Monte Carlo filtering and Markov chain Monte Carlo (MCMC) sampling to infer an interest level of the person in the advertising content displayed by the advertising station. The executable instructions further include instructions configured to update the advertising content displayed by the advertising station in real time in response to the inferred interest level of the person passing the advertising station.
Various refinements of the features noted above may exist in relation to various aspects of the subject matter described herein. Further features may also be incorporated in these various aspects as well. These refinements and additional features may exist individually or in any combination. For instance, various features discussed below in relation to one or more of the illustrated embodiments may be incorporated into any of the described embodiments of the present disclosure alone or in any combination. Again, the brief summary presented above is intended only to familiarize the reader with certain aspects and contexts of the subject matter disclosed herein without limitation to the claimed subject matter.
These and other features, aspects, and advantages of the present technique will become better understood when the following detailed description is read with reference to the accompanying drawings in which like characters represent like parts throughout the drawings, wherein:
One or more specific embodiments of the presently disclosed subject matter will be described below. In an effort to provide a concise description of these embodiments, all features of an actual implementation may not be described in the specification. It should be appreciated that in the development of any such actual implementation, as in any engineering or design project, numerous implementation-specific decisions must be made to achieve the developers' specific goals, such as compliance with system-related and business-related constraints, which may vary from one implementation to another. Moreover, it should be appreciated that such a development effort might be complex and time consuming, but would nevertheless be a routine undertaking of design, fabrication, and manufacture for those of ordinary skill having the benefit of this disclosure. When introducing elements of various embodiments of the present techniques, the articles “a,” “an,” “the,” and “said” are intended to mean that there are one or more of the elements. The terms “comprising,” “including,” and “having” are intended to be inclusive and mean that there may be additional elements other than the listed elements.
Certain embodiments of the present disclosure relate to tracking aspects of individuals, such as body pose and gaze directions. Further, in some embodiments, such information may be used to infer user interaction with, and interest in, advertising content provided to the user. The information may also be used to enhance user experience with interactive advertising content. Gaze is a strong indication of “focus of attention,” which provides useful information for interactivity. In one embodiment, a system jointly tracks body pose and gaze of individuals from both fixed camera views and using a set of Pan-Tilt-Zoom (PTZ) cameras to obtain high-quality views in high resolution. People's body pose and gaze may be tracked using a centralized tracker running on the fusion of views from both fixed and Pan-Tilt-Zoom (PTZ) cameras. But in other embodiments, one or both of body pose and gaze directions may be determined from image data of only a single camera (e.g., one fixed camera or one PTZ camera).
A system 10 is depicted in
The advertising station 12 includes a controller 20 for controlling the various components of the advertising station 12 and for outputting the advertising content 18. In the depicted embodiment, the advertising station 12 includes one or more cameras 22 for capturing image data from a region near the display 14. For example, the one or more cameras 22 may be positioned to capture imagery of potential customers using or passing by the display 14. The cameras 22 may include either or both of at least one fixed camera or at least one PTZ camera. For instance, in one embodiment, the cameras 22 include four fixed cameras and four PTZ cameras.
Structured light elements 24 may also be included with the advertising station 12, as generally depicted in
Further, a data processing system 26 may be included in the advertising station 12 to receive and process image data (e.g., from the cameras 22). Particularly, in some embodiments, the image data may be processed to determine various user characteristics and track users within the viewing areas of the cameras 22. For example, the data processing system 26 may analyze the image data to determine each person's position, moving direction, tracking history, body pose direction, and gaze direction or angle (e.g., with respect to moving direction or body pose direction). Additionally, such characteristics may then be used to infer the level of interest or engagement of individuals with the advertising station 12.
Although the data processing system 26 is shown as incorporated into the controller 20 in
Either or both of the controller 20 and the data processing system 26 may be provided in the form of a processor-based system 30 (e.g., a computer), as generally depicted in
In general, the processor-based system 30 may include a microcontroller or microprocessor 32, such as a central processing unit (CPU), which may execute various routines and processing functions of the system 30. For example, the microprocessor 32 may execute various operating system instructions as well as software routines configured to effect certain processes. The routines may be stored in or provided by an article of manufacture including one or more non-transitory computer-readable media, such as a memory 34 (e.g., a random access memory (RAM) of a personal computer) or one or more mass storage devices 36 (e.g., an internal or external hard drive, a solid-state storage device, an optical disc, a magnetic storage device, or any other suitable storage device). In addition, the microprocessor 32 processes data provided as inputs for various routines or software programs, such as data provided as part of the present techniques in computer-based implementations.
Such data may be stored in, or provided by, the memory 34 or mass storage device 36. Alternatively, such data may be provided to the microprocessor 32 via one or more input devices 38. The input devices 38 may include manual input devices, such as a keyboard, a mouse, or the like. In addition, the input devices 38 may include a network device, such as a wired or wireless Ethernet card, a wireless network adapter, or any of various ports or devices configured to facilitate communication with other devices via any suitable communications network 28, such as a local area network or the Internet. Through such a network device, the system 30 may exchange data and communicate with other networked electronic systems, whether proximate to or remote from the system 30. The network 28 may include various components that facilitate communication, including switches, routers, servers or other computers, network adapters, communications cables, and so forth.
Results generated by the microprocessor 32, such as the results obtained by processing data in accordance with one or more stored routines, may be reported to an operator via one or more output devices, such as a display 40 or a printer 42. Based on the displayed or printed output, an operator may request additional or alternative processing or provide additional or alternative data, such as via the input device 38. Communication between the various components of the processor-based system 30 may typically be accomplished via a chipset and one or more busses or interconnects which electrically connect the components of the system 30.
Operation of the advertising system 10, the advertising station 12, and the data processing system 26 may be better understood with reference to
A method for interactive advertising is generally depicted as a flowchart 70 in
Once received, the user tracking data may be processed to infer a level of interest in output advertising content by potential customers near the advertising station 12 (block 76). For instance, either or both of body pose direction and gaze direction may be processed to infer interest levels of users in content provided by the advertising station 12. Also, the advertising system 10 may control content provided by the advertising station 12 based on the inferred level of interest of the potential customers (block 78). For example, the advertising station 12 may update the advertising content to encourage new users to view or begin interacting with the advertising station if users are showing minimal interest in the output content. Such updating may include changing characteristics of the displayed content (e.g., changing colors, characters, brightness, and so forth), starting a new playback portion of the displayed content (e.g., a character calling out to passersby), or selecting different content altogether (e.g., by the controller 20). If the level of interest of nearby users is high, the advertising station 12 may vary the content to keep a user's attention or encourage further interaction.
The inference of interest by one or more user or potential customers may be based on analysis of the determined characteristics and better understood with reference to
In
In
As noted above, the advertising system 10 may determine certain tracking characteristics from the captured image data. One embodiment for tracking gaze direction by estimating location, body pose, and head pose direction of multiple individuals in unconstrained environments is provided as follows. This embodiment combines person detections from fixed cameras with directional face detections obtained from actively controlled Pan-Tilt-Zoom (PTZ) cameras and estimates both body pose and head pose (gaze) direction independently from motion direction, using a combination of sequential Monte Carlo Filtering and MCMC (i.e., Markov chain Monte Carlo) sampling. There are numerous benefits in tracking body pose and gaze in surveillance. It allows to track people's focus of attention, can optimize the control of active cameras for biometric face capture, and can provide better interaction metrics between pairs of people. The availability of gaze and face detection information also improves localization and data association for tracking in crowded environments. While this technique may be useful in an interactive advertising context as described above, it is noted that the technique may be broadly applicable to a number of other contexts.
Detecting and tracking individuals under unconstrained conditions such as in mass transit stations, sport venues, and schoolyards may be important in a number of applications. On top of that, the understanding of their gaze and intention are more challenging due to the general freedom of movements and frequent occlusions. Moreover, face images in standard surveillance videos are usually low-resolution, which limits the detection rate. Unlike some previous approaches that at most obtained gaze information, in one embodiment of the present disclosure multi-view Pan-Tilt-Zoom (PTZ) cameras may be used to tackle the problem of joint, holistic tracking of both body pose and head orientation in real-time. It may be assumed that the gaze can be reasonably derived by head pose in most cases. As used below, “head pose” refers to gaze or visual focus of attention, and these terms may be used interchangeably. The coupled person tracker, pose tracker, and gaze tracker are integrated and synchronized, thus robust tracking via mutual update and feedback is possible. The capability to reason over gaze angle provides a strong indication of attention, which may be beneficial to a surveillance system. In particular, as part of interaction models in event recognition, it may be important to know if a group of individuals are facing each other (e.g., talking), facing a common direction (e.g., looking at another group before a conflict is about to happen), or facing away from each other (e.g., because they are not related or because they are in a “defense” formation).
The embodiment described below provides a unified framework to couple multi-view person tracking with asynchronous PTZ gaze tracking to jointly and robustly estimate pose and gaze, in which a coupled particle filtering tracker jointly estimates body pose and gaze. While person tracking may be used to control PTZ cameras, allowing performance of face detection and gaze estimation, the resulting face detection locations may in turn be used to further improve tracking performance. In this manner, track information can be actively leveraged to control PTZ cameras in maximizing the probability of capturing frontal facial views. The present embodiment may be considered to be an improvement over previous efforts that used the walking direction of individuals as an indication of gaze direction, which breaks down in situations where people are stationary. The presently disclosed framework is general and applicable to many other vision-based applications. For example, it may allow optimal face capture for biometrics, particularly in environments where people are stationary, because it obtains gaze information directly from face detections.
In one embodiment, a network of fixed cameras are used to perform sitewide person tracking. This person tracker drives one or more PTZ cameras to target individuals to obtain close-up views. A centralized tracker operates on the groundplane (e.g., a plane representative of the ground on which target individuals move) to fuse together information from person tracks and face tracks. Due to the large computational burden on inferring gaze from face detections, the person tracker and face tracker may operate asynchronously to run in real-time. The present system can operate on either a single or multiple cameras. The multi-camera setting may improve overall tracking performance in crowded conditions. Gaze tracking in this case is also useful in performing high-level reasoning, e.g., to analyze social interactions, attention model, and behaviors.
Each individual may be represented with a state vector s=[x, v, α, ω, θ], where x is the location on the (X,Y) groundplane metric world, v is the velocity on the groundplane, a is the horizontal orientation of the body around the groundplane normal, co is the horizontal gaze angle, and θ is the vertical gaze angle (positive above the horizon and negative below it). There are two types of observations in this system: person detections (z, R), where z is a groundplane location measurement and R the uncertainty of this measurement, and face detections (z, R, γ, ρ) where the additional parameters γ and ρ are the horizontal and vertical gaze angles. Each person's head and foot locations are extracted from image-based person detections and backprojected onto the world headplane (e.g., a plane parallel to the groundplane at head level of the person) and groundplane respectively, using an unscented transform (UT). Next, face positions and poses in PTZ views are obtained using a PittPatt face detector. Their metric world groundplane locations are again obtained through back-projection. Face pose is obtained by matching face features. Individual's gaze angles are obtained by mapping face pan and rotation angles in image space into the world space. Finally, the world gaze angles are obtained by mapping the image local face normal nimg into world coordinates via nw=nimgR−T, where R is the rotation matrix of the projection P=[R|t]. Observation gaze angles (γ, ρ) are obtained directly from this normal vector. Width and height of the face are used to estimate a covariance confidence level for the face location. The covariance is projected from the image to the ground-plane again using the UT from the image to the head plane, followed by down projection to the groundplane.
In contrast to previous efforts in which a person's gaze angle was estimated independently from location and velocity and body pose was ignored, the present embodiment correctly models the relationship between motion direction, body pose, and gaze. First, in this embodiment body pose is not strictly tied to motion direction. People can move backwards and sideways especially when people are waiting or standing in groups (albeit, with increasing velocity sideways people's motion becomes improbable, and at even greater velocities, only forward motion may be assumed). Secondly, head pose is not tied to motion direction, but there are relatively strict limits on what pose the head can assume relative to body pose. Under this model the estimation of body pose is not trivial as it is only loosely coupled to gaze angle and velocity (which in turn is only observed indirectly). The entire state estimation may be performed using a Sequential Monte Carlo filter. Assuming a method for associating measurements with tracks over time, for the sequential Monte Carlo filter, the following are specified below: (i) the dynamical model and (ii) the observation model of our system.
Dynamical Model: Following the description above, the state vector is s=[x, v, α, ω, θ] and the state prediction model decomposes as follows:
p(st+1|st)=p(qt+1|qt)p(αt+1|vt+1,αt) (1)
p(φt+1|φt,αt+1)p(θt+1|θt),
using the abbreviation q=(x, v)=(x, y, v, vy). For the location and velocity we assume a standard linear dynamical model
p(qt+1|qt)=(qt+1−Ftgt,Qt), (2)
where denotes Normal distribution, Ft is a standard constant velocity state predictor corresponding to xt+1=xt+vtΔt and Qt the standard system dynamics. The second term in Eq. (1) describes the propagation of the body pose under consideration of the current velocity vector. We assume the following model
where Pf=0.8 is the probability (for medium velocities 0.5 m/s<v<2 m/s) of a person walking forwards, Pb=0.15 the probability (for medium velocities) of walking backwards, and Po=0.05 the background probability allowing arbitrary pose to movement direction relationships, based on experimental heuristics. With vt+1 we denote the direction of the velocity vector vt+1 and with σvα the expected distribution of deviations between movement vector and body pose. The front term N (αt+1−αt, σα) represents the system noise component, which in turn limits the change in body pose over time. All changes in pose are attributed to deviations from the constant pose model.
The third term in Eq. (1) describes the propagation of the horizontal gaze angle under consideration of the current body pose. We assume the following model
where the two terms weighted by Pgu=0.4 and Pg=0.6 define a distribution of the gaze angle (φt+1) with respect to body pose (αt+1) that allows arbitrary values within a range of
but favors distribution around body pose. Finally the fourth term in Eq. (1) describes the propagation of the tilt angle, p(θt+1|θt)=(θt+1,σθO)(θt+1−θt, σθ), where the first term models that a person tends to favor horizontal directions and the second term represents system noise. Noted that in all above equations, care has to be taken with regard to angular differences.
To propagate the particles forward in time, we need to sample from the state transition density eq. (1), given a previous set of weighted samples (sti, wti). While for the location, velocity and vertical head pose, this is easy to do. The loose coupling between velocity, body pose and horizontal head pose is represented by a non-trivial set of transition densities Eq. (3) and Eq. (4). To generate samples from these transition densities we perform two Markov Chain Monte Carlo (MCMC). Exemplified on Eq. (3), we use a Metropolis sampler to obtain a new sample as follows:
Typically only a small fixed number of steps (N=20) are performed. The above sampling is repeated for the horizontal head angle in Eq. (4). In both cases the jump distribution is set equal to the system noise distribution, except with a fraction of the variance i.e., G(α|at+1i[k])=(α−at+1i[k]), σo/3) for body pose; G(φ|φt+1i [k]) and G(θ|θt+1i[k]) are defined similarly. The above MCMC sampling ensures that only particles that adhere both to the expected system noise distribution as well to the loose relative pose constraints are generated. We found 1000 particles are sufficient.
Observation Model: After sampling the particle distribution (sti,wti) according to its weights {wti} and forward propagation in time (using MCMC as described above), we obtain a set of new samples {st+1i}. The samples are weighted according to the observation likelihood models described next. For the case of person detections, the observations are represented by (zt+1, Rt+1) and the likelihood model is:
p(zt+1|st+1)=(zt+1−xt+1|Rt+1). (5)
For the case of face detection (zt+1, Rt+1, γt+1, ρt+1), the observation likelihood model is
p(zt+1,γt+1,ρt+1|st+1)=(zt+1−xt+1|Rt+1) (6)
(λ(γt+1,ρt+1),(φt+1,θt+1)),σλ),
where λ(.) is the geodesic distance (expressed in angles) between the points on the unit circle represented by the gaze vector (φt+1, θt+1) and the observed face direction (γt+1, ρt+1) respectively.
λ((γt+1,ρt+1),(ϕt+1,θt+1))=arccos(sin ρt+1 sin θt+1+cos ρt+1 cos ρt+1 cos(γt+1−ϕt+1)).
The value σλ is the uncertainty that is attributed to the face direction measurement. Overall the tracking state update process works as summarized in Algorithm 1:
Data Association: So far we assumed that observations had already been assigned to tracks. In this section we will elaborate how observation to track assignment is performed. To enable the tracking of multiple people, observations have to be assigned to tracks over time. In our system, observations arise asynchronously from multiple camera views. The observations are projected into the common world reference frame, under consideration of the (possibly time varying) projection matrices, and are consumed by a centralized tracker in the order that the observations have been acquired. For each time step, a set of (either person or face) detections Ztl have to be assigned to tracks stk. We construct a distance measure Ckl=d(stk,Ztj) to determine the optimal one-to-one assignment of observations l to tracks k using Munkres algorithm. Observations that do not get assigned to tracks might be confirmed as new targets and are used to spawn new candidate tracks. Tracks that do not get detections assigned to them are propagated forward in time and thus do not undergo weight update.
The use of face detections leads to an additional source of location information that may be used to improve tracking. Results show that this is particularly useful in crowded environments, where face detectors are less susceptible to person-person occlusion. Another advantage is that the gaze information introduces an additional component into the detection-to-track assignment distance measure, which works effectively to assign oriented faces to person tracks.
For person detections, the metric is computed from the target gate as follows:
where Rtl is the location covariance of observation l and xtki is the location of the ith particle of track k at time t. The distance measure is then given as:
C
kl
l=(μtk−ztl)T(Σtkl)−1(μtk−ztl)+log|Σtkl|
For face detections, the above is augmented by an additional term for the angle distance:
where the μϕtk and μϕtk are computed from the first order spherical moment of all particle gaze angles angular mean); σλ is the standard deviation from this moment; (γtl, ptl) are the horizontal and vertical gaze observation angles in observation 1. Since only PTZ cameras provide face detections and only fixed cameras provide person detections, data association is performed with either all person detections or all face detections; the gaze of mixed associations does not arise.
Technical effects of the invention include improvements in tracking of users and in allowing the determination of user interest levels in advertising content based on such tracking. In an interactive advertising context, the tracked individuals may be able to move freely in an unconstrained environment. But by fusing the tracking information from various camera views and determining certain characteristics, such as each person's position, moving direction, tracking history, body pose, and gaze angle, for example, the data processing system 26 may estimate each individual's instantaneous body pose and gaze by smoothing and interpolating between observations. Even in the cases of missing observation due to occlusion or missing steady face captures due to the motion blur of moving PTZ cameras, the present embodiments can still maintain the tracker using a “best guess” interpolation and extrapolation over time. Also, the present embodiments allow determinations of whether a particular individual has strong attention or has interest at the ongoing advertising program (e.g., currently interacting with the interactive advertising station, just passing by or has just stopped to play with the advertising station). Also, the present embodiments allow the system to directly infer if a group of people are together interacting with the advertising station (e.g., Is someone currently discussing with peers (revealing mutual gazes), asking them to participate, or inquiring parent's support of purchase?). Further, based on such information, the advertising system can optimally update its scenario/content to best address the level of involvement. And by reacting to people's attention, the system also demonstrates strong capability of intelligence, which increases popularity and encourages more people to try interacting with the system.
While only certain features of the invention have been illustrated and described herein, many modifications and changes will occur to those skilled in the art. It is, therefore, to be understood that the appended claims are intended to cover all such modifications and changes as fall within the true spirit of the invention.
This application is a continuation of U.S. application Ser. No. 13/221,896, entitled “PERSON TRACKING AND INTERACTIVE ADVERTISING,” filed on Aug. 30, 2011, which is hereby incorporated by reference in its entirety.
This invention was made with Government support under grant number 2009-SQ-B9-K013 awarded by the National Institute of Justice. The Government has certain rights in the invention.
Number | Date | Country | |
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Parent | 13221896 | Aug 2011 | US |
Child | 16436583 | US |