行人识别行人识别行人识别行人识别行人识别行人识别
2022-10-08 12:05:09 149.16MB 行人识别
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识别行人/红绿灯/盲道等等的模型onnx
2022-07-27 09:07:32 947KB 机器学习
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YOLOv5行人车辆跟踪检测识别计数系统实现了 出/入 分别计数。 默认是 南/北 方向检测,若要检测不同位置和方向,可在 main.py 文件第13行和21行,修改2个polygon的点。 默认检测类别:行人、自行车、小汽车、摩托车、公交车、卡车。 YOLOv5行人车辆跟踪检测识别计数系统实现了 出/入 分别计数。 默认是 南/北 方向检测,若要检测不同位置和方向,可在 main.py 文件第13行和21行,修改2个polygon的点。 默认检测类别:行人、自行车、小汽车、摩托车、公交车、卡车。YOLOv5行人车辆跟踪检测识别计数系统实现了 出/入 分别计数。 默认是 南/北 方向检测,若要检测不同位置和方向,可在 main.py 文件第13行和21行,修改2个polygon的点。 默认检测类别:行人、自行车、小汽车、摩托车、公交车、卡车。
INRIA Person 数据集用来对图像和视频中的直立行人进行检测。该数据集包含两类格式的数据,第一类为原始图像和相应的直立行人标注。第二类为标准化为 64x128 像素的直立性人正类和对应图片的负类图像。
2022-05-22 11:51:07 979.49MB 图像识别 图像检测 行人识别 行人检测
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人脸识别正负样本集,负样本2500多,且为处理后灰度图;正样本1000多张,且为归一化后的图片;同时负样本也是适应于车辆识别,车牌识别,行人检测等
2022-04-03 18:31:18 58B 人工智能 机器学习
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Human parsing has been extensively studied recently (Yamaguchi et al. 2012; Xia et al. 2017) due to its wide applications in many important scenarios. Mainstream fashion parsing models (i.e., parsers) focus on parsing the high-resolution and clean images. However, directly applying the parsers trained on benchmarks of high-quality samples to a particular application scenario in the wild, e.g., a canteen, airport or workplace, often gives non-satisfactory performance due to domain shift. In this paper, we explore a new and challenging cross-domain human parsing problem: taking the benchmark dataset with extensive pixel-wise labeling as the source domain, how to obtain a satisfactory parser on a new target domain without requiring any additional manual labeling? To this end, we propose a novel and efficient crossdomain human parsing model to bridge the cross-domain differences in terms of visual appearance and environment conditions and fully exploit commonalities across domains. Our proposed model explicitly learns a feature compensation network, which is specialized for mitigating the cross-domain differences. A discriminative feature adversarial network is introduced to supervise the feature compensation to effectively reduces the discrepancy between feature distributions of two domains. Besides, our proposed model also introduces a structured label adversarial network to guide the parsing results of the target domain to follow the high-order relationships of the structured labels shared across domains. The proposed framework is end-to-end trainable, practical and scalable in real applications. Extensive experiments are conducted where LIP dataset is the source domain and 4 different datasets including surveillance videos, movies and runway shows without any annotations, are evaluated as target domains. The results consistently confirm data efficiency and performance advantages of the proposed method for the challenging cross-domain human parsing problem. Abstract—This paper presents a robust Joint Discriminative appearance model based Tracking method using online random forests and mid-level feature (superpixels). To achieve superpixel- wise discriminative ability, we propose a joint appearance model that consists of two random forest based models, i.e., the Background-Target discriminative Model (BTM) and Distractor- Target discriminative Model (DTM). More specifically, the BTM effectively learns discriminative information between the target object and background. In contrast, the DTM is used to suppress distracting superpixels which significantly improves the tracker’s robustness and alleviates the drifting problem. A novel online random forest regression algorithm is proposed to build the two models. The BTM and DTM are linearly combined into a joint model to compute a confidence map. Tracking results are estimated using the confidence map, where the position and scale of the target are estimated orderly. Furthermore, we design a model updating strategy to adapt the appearance changes over time by discarding degraded trees of the BTM and DTM and initializing new trees as replacements. We test the proposed tracking method on two large tracking benchmarks, the CVPR2013 tracking benchmark and VOT2014 tracking challenge. Experimental results show that the tracker runs at real-time speed and achieves favorable tracking performance compared with the state-of-the-art methods. The results also sug- gest that the DTM improves tracking performance significantly and plays an important role in robust tracking.
2022-03-26 14:11:37 26.39MB 人脸识别 行人Reid
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机器学习,深度学习,图像识别与机器学习的说明与代码
2021-10-23 09:31:04 161KB python 图像识别 识别行人 识别车辆
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INRIA Person 数据集用来对图像和视频中的直立行人进行检测。该数据集包含两类格式的数据,第一类为原始图像和相应的直立行人标注。第二类为标准化为 64x128 像素的直立性人正类和对应图片的负类图像。
2021-09-09 19:16:15 979.49MB 图像识别 图像检测 行人识别 行人检测
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人脸识别正负样本集,负样本2500多,且为处理后灰度图;正样本1000多张,且为归一化后的图片;同时负样本也是适应于车辆识别,车牌识别,行人检测等
2021-05-04 14:07:19 45.38MB 人脸识别 机器学习
目标的运动特征,可以用于运动表述,是行为理解等高层部分的基础。 常见的运动表述方法有:运动轨迹、时空图表述和光流。
2021-04-02 18:11:35 778KB 人体动作识别 行人
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