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SPADE: Scalar Product Accelerator by Integer Decomposition for Object Detection

机译:Spade:Scrarar产品加速器通过整数分解进行对象检测

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We propose a method for accelerating computation of an object detector based on a linear classifier when objects are expressed by binary feature vectors. Our key idea is to decompose a real-valued weight vector of the linear classifier into a weighted sum of a few ternary basis vectors so as to preserve the original classification scores. Our data-dependent decomposition algorithm can approximate the original classification scores by a small number of the ternary basis vectors with an allowable error. Instead of using the original real-valued weight vector, the approximated classification score can be obtained by evaluating the few inner products between the binary feature vector and the ternary basis vectors, which can be computed using extremely fast logical operations. We also show that each evaluation of the inner products can be cascaded for incorporating early termination. Our experiments revealed that the linear filtering used in a HOG-based object detector becomes 36.9× faster than the original implementation with 1.5% loss of accuracy for 0.1 false positives per image in pedestrian detection task.
机译:我们提出了一种用于在由二进制特征向量表示对象时基于线性分类来加速对象检测器的计算的方法。我们的关键思想是将线性分类器的实值重量向量分解为几个三元基矢量的加权之和,以便保留原始分类得分。我们的数据相关的分解算法可以通过具有允许误差的少量三元基向量来近似原始分类分数。通过评估二进制特征向量和三元基向量之间的少数内部产品,可以通过使用极快的逻辑操作来计算近似的分类分数来获得近似分类评分。我们还表明,可以级联内部产品的每次评估以结合早期终止。我们的实验显示,基于生猪的物体检测器中使用的线性滤波比原始实现更快36.9×,在行人检测任务中每张图像的0.1误报的精度损失1.5%。

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