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Joint Object Detection and Depth Estimation in Multiplexed Image

机译:多路影像中的联合目标检测与深度估计

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This paper presents an object detection method that can simultaneously estimate the positions and depth of the objects from multiplexed images. Multiplexed image [28] is produced by a new type of imaging device that collects the light from different fields of view using a single image sensor, which is originally designed for stereo, 3D reconstruction and broad view generation using computation imaging. Intuitively, multiplexed image is a blended result of the images of multiple views and both of the appearance and disparities of objects are encoded in a single image implicitly, which provides the possibility for reliable object detection and depth/disparity estimation. Motivated by the recent success of CNN based detector, a multi-anchor detector method is proposed, which detects all the views of the same object as a clique and uses the disparity of different views to estimate the depth of the object. The method is interesting in the following aspects: firstly, both locations and depth of the objects can be simultaneously estimated from a single multiplexed image; secondly, there is almost no computation load increase comparing with the popular object detectors; thirdly, even in the blended multiplexed images, the detection and depth estimation results are very competitive. There is no public multiplexed image dataset yet, therefore the evaluation is based on simulated multiplexed image using the stereo images from KITTI, and very encouraging results have been obtained.
机译:本文提出了一种物体检测方法,该方法可以从多路复用图像中同时估计物体的位置和深度。多路复用图像[28]由新型成像设备产生,该成像设备使用单个图像传感器收集来自不同视场的光,该图像传感器最初设计用于使用计算成像的立体,3D重建和广角生成。直观地,多路复用图像是多个视图的图像的混合结果,并且对象的外观和视差都隐式地编码在单个图像中,这提供了可靠的对象检测和深度/视差估计的可能性。受基于CNN的检测器的最新成功的启发,提出了一种多锚检测器方法,该方法将同一个对象的所有视点检测为一个集团,并使用不同视点的视差来估计对象的深度。该方法在以下几个方面很有趣:首先,可以从单个多路复用图像上同时估计物体的位置和深度。其次,与流行的物体检测器相比,几乎没有计算量增加。第三,即使在混合的多路复用图像中,检测和深度估计结果也非常有竞争力。尚无公共多路复用图像数据集,因此评估是基于使用KITTI的立体图像的模拟多路复用图像进行的,并且获得了令人鼓舞的结果。

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