Publications by authors named "Amit Adam"

Article Synopsis
  • The proposed model enhances a pulsed time-of-flight (TOF) camera by allowing for flexible exposure profiles, unlike traditional phase-modulated TOF cameras.
  • It employs a generative probabilistic model to link imaging conditions with camera responses, enhancing depth, albedo, and ambient light intensity estimation at video frame rates.
  • The new two-path model also accounts for multipath effects efficiently, while a physically accurate simulation provides realistic benchmarks for understanding these phenomena.
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We revisit the problem of specific object recognition using color distributions. In some applications--such as specific person identification--it is highly likely that the color distributions will be multimodal and hence contain a special structure. Although the color distribution changes under different lighting conditions, some aspects of its structure turn out to be invariants.

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Detecting mutual awareness events.

IEEE Trans Pattern Anal Mach Intell

December 2012

It is quite common that multiple human observers attend to a single static interest point. This is known as a mutual awareness event (MAWE). A preferred way to monitor these situations is with a camera that captures the human observers while using existing face detection and head pose estimation algorithms.

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We consider curve evolution based on comparing distributions of features, and its applications for scene segmentation. In the first part, we promote using cross-bin metrics such as the Earth Mover's Distance (EMD), instead of standard bin-wise metrics as the Bhattacharyya or Kullback-Leibler metrics. To derive flow equations for minimizing functionals involving the EMD, we employ a tractable expression for calculating EMD between one-dimensional distributions.

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We present a novel algorithm for detection of certain types of unusual events. The algorithm is based on multiple local monitors which collect low-level statistics. Each local monitor produces an alert if its current measurement is unusual, and these alerts are integrated to a final decision regarding the existence of an unusual event.

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