TensorFlow实现center loss

本文最新版发表在此处(http://tang.su/2017/04/TensorFlow-center-loss/)

Center loss是ECCV2016中一篇论文《A Discriminative Feature Learning Approach for Deep Face Recognition》提出来的概念,主要思想就是在softmax loss基础上额外加入一个正则项,让网络中每一类样本的特征向量都能够尽量聚在一起。

具体的原理推导等请参考论文,论文作者放出了Caffe实现,网上还能找到mxnet的实现,这里我放出一个TensorFlow版的实现及详细注释,代码很短,如下:

def get_center_loss(features, labels, alpha, num_classes):
    # alpha:中心的更新比例
    # 获取特征长度
    len_features = features.get_shape()[1]
    # 建立一个变量,存储每一类的中心,不训练
    centers = tf.get_variable('centers', [num_classes, len_features], dtype=tf.float32,
        initializer=tf.constant_initializer(0), trainable=False)
    # 将特征reshape成一维
    labels = tf.reshape(labels, [-1])

    # 获取当前batch每个样本对应的中心
    centers_batch = tf.gather(centers, labels)
    # 计算center loss的数值
    loss = tf.nn.l2_loss(features - centers_batch)

    # 以下为更新中心的步骤
    diff = centers_batch - features

    # 获取一个batch中同一样本出现的次数,这里需要理解论文中的更新公式
    unique_label, unique_idx, unique_count = tf.unique_with_counts(labels)
    appear_times = tf.gather(unique_count, unique_idx)
    appear_times = tf.reshape(appear_times, [-1, 1])

    diff = diff / tf.cast((1 + appear_times), tf.float32)
    diff = alpha * diff
    # 更新中心
    centers = tf.scatter_sub(centers, labels, diff)

    return loss, centers

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