CVSep 8, 2016

Reduced Memory Region Based Deep Convolutional Neural Network Detection

arXiv:1609.02500v111 citations
AI Analysis

This addresses the challenge of implementing efficient pedestrian detection on embedded systems with tight memory constraints, though it appears incremental as it adapts existing CNN approaches.

The paper tackles the problem of pedestrian detection for automotive safety by developing a CNN-based detector that achieves accuracy close to state-of-the-art while having low computational complexity and very low memory usage, with results demonstrated on the Caltech Pedestrian dataset.

Accurate pedestrian detection has a primary role in automotive safety: for example, by issuing warnings to the driver or acting actively on car's brakes, it helps decreasing the probability of injuries and human fatalities. In order to achieve very high accuracy, recent pedestrian detectors have been based on Convolutional Neural Networks (CNN). Unfortunately, such approaches require vast amounts of computational power and memory, preventing efficient implementations on embedded systems. This work proposes a CNN-based detector, adapting a general-purpose convolutional network to the task at hand. By thoroughly analyzing and optimizing each step of the detection pipeline, we develop an architecture that outperforms methods based on traditional image features and achieves an accuracy close to the state-of-the-art while having low computational complexity. Furthermore, the model is compressed in order to fit the tight constrains of low power devices with a limited amount of embedded memory available. This paper makes two main contributions: (1) it proves that a region based deep neural network can be finely tuned to achieve adequate accuracy for pedestrian detection (2) it achieves a very low memory usage without reducing detection accuracy on the Caltech Pedestrian dataset.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes