TY - JOUR
T1 - Circulant Binary Convolutional Networks for Object Recognition
AU - Liu, Chunlei
AU - Ding, Wenrui
AU - Hu, Yuan
AU - Xia, Xin
AU - Zhang, Baochang
AU - Liu, Jian Zhuang
AU - Doermann, David
N1 - Publisher Copyright:
© 2007-2012 IEEE.
PY - 2020/5
Y1 - 2020/5
N2 - The rapidly decreasing computation and memory cost has recently driven the success of many applications in the field of deep learning. Practical applications of deep learning in resource-limited hardware, such as embedded devices and smart phones, however, remain challenging. For binary convolutional networks, the reason lies in the degraded representation caused by binarizing full-precision filters. To address this problem, we propose new circulant filters (CiFs) and a circulant binary convolution (CBConv) to enhance the capacity of binarized convolutional features via our circulant back propagation (CBP). The CiFs can be easily incorporated into existing deep convolutional neural networks (DCNNs), which leads to new Circulant Binary Convolutional Networks (CBCNs). Extensive experiments confirm that the performance gap between the 1-bit and full-precision DCNNs is minimized by increasing the filter diversity, which further increases the representational ability in our networks. Our experiments on ImageNet show that CBCNs achieve 61.4% top-1 accuracy with ResNet18. Compared to the state-of-the-art such as XNOR, CBCNs can achieve up to 10% higher top-1 accuracy with more powerful representational ability. Also, CBCNs approximately achieve a storage reduction about 32 times. In particular, our method shows strong generalization on the object recognition task, i.e., face recognition, facial expression recognition and person re-identification.
AB - The rapidly decreasing computation and memory cost has recently driven the success of many applications in the field of deep learning. Practical applications of deep learning in resource-limited hardware, such as embedded devices and smart phones, however, remain challenging. For binary convolutional networks, the reason lies in the degraded representation caused by binarizing full-precision filters. To address this problem, we propose new circulant filters (CiFs) and a circulant binary convolution (CBConv) to enhance the capacity of binarized convolutional features via our circulant back propagation (CBP). The CiFs can be easily incorporated into existing deep convolutional neural networks (DCNNs), which leads to new Circulant Binary Convolutional Networks (CBCNs). Extensive experiments confirm that the performance gap between the 1-bit and full-precision DCNNs is minimized by increasing the filter diversity, which further increases the representational ability in our networks. Our experiments on ImageNet show that CBCNs achieve 61.4% top-1 accuracy with ResNet18. Compared to the state-of-the-art such as XNOR, CBCNs can achieve up to 10% higher top-1 accuracy with more powerful representational ability. Also, CBCNs approximately achieve a storage reduction about 32 times. In particular, our method shows strong generalization on the object recognition task, i.e., face recognition, facial expression recognition and person re-identification.
KW - 1-bit DCNNs
KW - Circulant binary convolutional networks
KW - circulant back propagation
KW - circulant filters
UR - https://www.scopus.com/pages/publications/85090150961
U2 - 10.1109/JSTSP.2020.2969516
DO - 10.1109/JSTSP.2020.2969516
M3 - 文章
AN - SCOPUS:85090150961
SN - 1932-4553
VL - 14
SP - 884
EP - 893
JO - IEEE Journal on Selected Topics in Signal Processing
JF - IEEE Journal on Selected Topics in Signal Processing
IS - 4
M1 - 8970353
ER -