排序方式: 共有63条查询结果,搜索用时 29 毫秒
1.
为了准确识别现实场景下的人体动作,提出了基于多任务学习的人体动作识别方法。首先,对数据进行局部显著点的检测和特征描述。然后,利用K均值算法对所提特征进行聚类构建词袋模型。最后,利用任务之间的关系,实现现实场景下的人体动作识别。比较实验说明所提出方法能够较好的识别现实场景下的人体动作,并对数据背景、光照条件等外因具有较强的鲁棒性。 相似文献
2.
针对Image Quilting纹理合成算法的新旧纹理块拼接特点,研究了一种创建多任务实现纹理块切割拼接的并行编程模式.设计了重叠区域缝合路径计算的多任务模块函数iq(),利用MATLAB多核集群中创建的调度器将子任务分配到各个节点上并行执行计算.实验结果表明,该算法获得了较好的加速比,提高了多核CPU的使用效率,有效地提升了多核计算机资源的利用率. 相似文献
3.
将环境的波动性和度量噪音看作是影响绩效度量的两类不同的随机误差,在Linear-exponential-normal框架下,建立了以价值绩效度量和补偿绩效度量的线性组合为基础的收益激励模型,并分析了激励强度与绩效度量的一致性、敏感性和准确性之间的关系,以及环境波动性对上述关系的影响.研究发现,在确定性环境条件下,激励强度与绩效度量的"信号噪音比"成正比关系,但绩效度量的一致性的提高并不必然增加该度量指标在激励契约中的权重,而要视敏感性或噪音相对于一致性的变化幅度来定.特别地,在绩效度量的敏感性与一致性之间并不存在权衡取舍关系.研究还发现,波动性与激励强度之间存在负向关系,且波动性的存在降低了绩效度量的一致性和敏感性,但波动性对绩效度量的准确性的影响则呈非单调性变化. 相似文献
4.
针对当前行人统计方式落后、非实时性、统计数据滞后等问题,文中提出采用智能视频监控、图像识别的方式实时统计行人流量。系统根据积分通道思想统计行人目标特征,通过Adaboost算法训练分类器对图像帧中的行人目标进行定位、识别。文中在已识别目标的基础上采用CPU多任务模型改进核相关滤波算法对目标进行实时跟踪、统计得到行人流量。测试结果表明,系统能实时识别、跟踪、统计行人目标,整体功能稳定,平均识别率为93%,改进多任务模型使得跟踪速率提高约20%。 相似文献
5.
6.
We discuss a variant of the multi-task n-vehicle exploration problem. Instead of requiring an optimal permutation of vehicles in every group, the new problem requires all vehicles in a group to arrive at the same destination. Given n tasks with assigned consume-time and profit, it may also be viewed as a maximization of every processor’s average profit. Further, we propose a new kind of partition problem in fractional form and analyze its computational complexity. By regarding fractional partition as a special case, we prove that the average profit maximization problem is NP-hard when the number of processors is fixed and it is strongly NP- hard in general. At last, a pseudo-polynomial time algorithm for the average profit maximization problem and the fractional partition problem is presented, using the idea of the pseudo-polynomial time algorithm for the classical partition problem. 相似文献
7.
Multi-task learning is a statistical methodology that aims to improve the generalization performances of estimation and prediction tasks by sharing common information among multiple tasks. On the other hand, compositional data consist of proportions as components summing to one. Because components of compositional data depend on each other, existing methods for multi-task learning cannot be directly applied to them. In the framework of multi-task learning, a network lasso regularization enables us to consider each sample as a single task and construct different models for each one. In this paper, we propose a multi-task learning method for compositional data using a sparse network lasso. We focus on a symmetric form of the log-contrast model, which is a regression model with compositional covariates. Our proposed method enables us to extract latent clusters and relevant variables for compositional data by considering relationships among samples. The effectiveness of the proposed method is evaluated through simulation studies and application to gut microbiome data. Both results show that the prediction accuracy of our proposed method is better than existing methods when information about relationships among samples is appropriately obtained. 相似文献
8.
传统推荐算法通过主题模型或者词语向量化的平均值对文本内容进行映射。针对现有方法不能充分利用文本信息或忽略词序信息这一问题,文中面向科学文献,提出了一种多任务学习推荐方法。该方法基于多任务学习框架,设计编码器并搭建了GL模型。该模型被训练为内容推荐与文本元数据预测的组合,可改善传统协同过滤的稀疏性问题,使得协同过滤模型正则化。最后,分别在公开数据集与私有数据集上进行了评估测试,结果表明所提方法性能优于现有的经典方法。 相似文献
9.
10.
STLITE/OS20是用于数字电视机顶盒中的嵌入式操作系统,具有实时、多任务等特点。介绍了该操作系统的内核、存储器管理和分区、分配策略、多任务调度及任务间通过信号量和消息处理进行通信的机制、中断管理等。 相似文献