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Multiple-Clothing Detection and Fashion Landmark Estimation Using a Single-Stage Detector

机译:使用单级探测器的多衣物检测和时尚地标估计

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摘要

Fashion image analysis has attracted significant research attention owing to the availability of large-scale fashion datasets with rich annotations. However, existing deep learning models for fashion datasets often have high computational requirements. In this study, we propose a new model suitable for low-power devices. The proposed network is a one-stage detector that rapidly detects multiple cloths and landmarks in fashion images. The network is designed as a modification of the EfficientDet originally proposed by Google Brain. The proposed network simultaneously trains the core input features with different resolutions and applies compound scaling to the backbone feature network. The bounding box/class/landmark prediction networks maintain the balance between the speed and accuracy. Moreover, a low number of parameters and low computational cost make it efficient. Without image preprocessing, we achieved 0.686 mean average precision (mAP) in the bounding box detection and 0.450 mAP in the landmark estimation on the DeepFashion2 validation dataset with an inference time of 42 ms. We obtained optimal results in extensive experiments with loss functions and optimizers. Furthermore, the proposed method has the advantage of operating in low-power devices.
机译:由于具有丰富注释的大规模时装数据集,时尚形象分析引起了显着的研究。然而,用于时尚数据集的现有深度学习模型通常具有高的计算要求。在这项研究中,我们提出了一种适用于低功耗器件的新模型。所提出的网络是一级探测器,可快速检测时尚图像中的多个布料和地标。该网络设计为谷歌大脑最初提出的高效设备的修改。该网络同时培训具有不同分辨率的核心输入功能,并将复合缩放应用于骨干功能网络。边界框/类/地标预测网络维持速度和准确性之间的平衡。此外,参数数量低,计算成本低效率。没有图像预处理,我们在边界箱检测中实现了0.686平均平均精度(MAP),并在Deepfashion2验证数据集中的地标估计中的0.450映射,其推断时间为42毫秒。我们获得了最佳结果,在具有损耗功能和优化器的广泛实验中。此外,所提出的方法具有在低功耗器件中操作的优点。

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