To address the dilemma of trade-off between efficiency and accuracy for object detection
based on the mechanism of object perception and recognition in visual attention theory
the two sides derived from gradient feature as magnitude and direction have been revisited to manifest their complementary characteristics.The new rapid object detection model based on two-layer cascade with gradients is motivated
making two types of category-independent and category-dependent detectors efficiently described.On the one hand
gradient magnitude can be used to generate the efficient object proposal in clutter from sliding window samples which guarantees the significant decrease on the number of windows for candidate and speeds up detection.On the other hand
the cascade-architecture in form of multiple sub-detectors can well adapt to the varying scales of different objects resulting in boost of accuracy.Experimental performance in PASCAL presents the effectiveness of cascade structure for gradient features
and demonstrates that our model can dramatically speed up the detection with the advantages of comparable accuracy against the state-of-the-art.